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Evaluating Soccer Match Prediction Models: A Deep Learning Approach and Feature Optimization for Gradient-Boosted Trees

Published 26 Sep 2023 in cs.LG and cs.AI | (2309.14807v1)

Abstract: Machine learning models have become increasingly popular for predicting the results of soccer matches, however, the lack of publicly-available benchmark datasets has made model evaluation challenging. The 2023 Soccer Prediction Challenge required the prediction of match results first in terms of the exact goals scored by each team, and second, in terms of the probabilities for a win, draw, and loss. The original training set of matches and features, which was provided for the competition, was augmented with additional matches that were played between 4 April and 13 April 2023, representing the period after which the training set ended, but prior to the first matches that were to be predicted (upon which the performance was evaluated). A CatBoost model was employed using pi-ratings as the features, which were initially identified as the optimal choice for calculating the win/draw/loss probabilities. Notably, deep learning models have frequently been disregarded in this particular task. Therefore, in this study, we aimed to assess the performance of a deep learning model and determine the optimal feature set for a gradient-boosted tree model. The model was trained using the most recent five years of data, and three training and validation sets were used in a hyperparameter grid search. The results from the validation sets show that our model had strong performance and stability compared to previously published models from the 2017 Soccer Prediction Challenge for win/draw/loss prediction.

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References (43)
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[\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarberrar2019guest{APACrefauthors}Berrar, D., Lopes, P., Davis, J.\BCBL Dubitzky, W.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleGuest editorial: special issue on machine learning for soccer Guest editorial: special issue on machine learning for soccer.\BBCQ \APACjournalVolNumPagesMachine Learning1081–7, \PrintBackRefs\CurrentBib Berrar, Lopes\BCBL \BBA Dubitzky [\APACyear2019] \APACinsertmetastarberrar2019incorporating{APACrefauthors}Berrar, D., Lopes, P.\BCBL Dubitzky, W.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleIncorporating domain knowledge in machine learning for soccer outcome prediction Incorporating domain knowledge in machine learning for soccer outcome prediction.\BBCQ \APACjournalVolNumPagesMachine learning10897–126, \PrintBackRefs\CurrentBib Bunker \BBA Susnjak [\APACyear2022] \APACinsertmetastarbunker2022application{APACrefauthors}Bunker, R.\BCBT \BBA Susnjak, T.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleThe application of machine learning techniques for predicting match results in team sport: A review The application of machine learning techniques for predicting match results in team sport: A review.\BBCQ \APACjournalVolNumPagesJournal of Artificial Intelligence Research731285–1322, \PrintBackRefs\CurrentBib Chen \BBA Guestrin [\APACyear2016] \APACinsertmetastarchen2016xgboost{APACrefauthors}Chen, T.\BCBT \BBA Guestrin, C.  \APACrefYearMonthDay2016. \BBOQ\APACrefatitleXgboost: A scalable tree boosting system Xgboost: A scalable tree boosting system.\BBCQ \APACrefbtitleProceedings of the 22nd acm sigkdd international conference on knowledge discovery and data mining Proceedings of the 22nd acm sigkdd international conference on knowledge discovery and data mining (\BPGS 785–794). \PrintBackRefs\CurrentBib Chung \BOthers. [\APACyear2014] \APACinsertmetastarchung2014empirical{APACrefauthors}Chung, J., Gulcehre, C., Cho, K.\BCBL Bengio, Y.  \APACrefYearMonthDay2014. \BBOQ\APACrefatitleEmpirical evaluation of gated recurrent neural networks on sequence modeling Empirical evaluation of gated recurrent neural networks on sequence modeling.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:1412.3555, \PrintBackRefs\CurrentBib Constantinou [\APACyear2019] \APACinsertmetastarconstantinou2019dolores{APACrefauthors}Constantinou, A.C.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleDolores: a model that predicts football match outcomes from all over the world Dolores: a model that predicts football match outcomes from all over the world.\BBCQ \APACjournalVolNumPagesMachine learning108149–75, \PrintBackRefs\CurrentBib Constantinou \BBA Fenton [\APACyear2012] \APACinsertmetastarconstantinou2012solving{APACrefauthors}Constantinou, A.C.\BCBT \BBA Fenton, N.E.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleSolving the problem of inadequate scoring rules for assessing probabilistic football forecast models Solving the problem of inadequate scoring rules for assessing probabilistic football forecast models.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports81, \PrintBackRefs\CurrentBib Constantinou \BBA Fenton [\APACyear2013] \APACinsertmetastarconstantinou2013determining{APACrefauthors}Constantinou, A.C.\BCBT \BBA Fenton, N.E.  \APACrefYearMonthDay2013. \BBOQ\APACrefatitleDetermining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries Determining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports9137–50, \PrintBackRefs\CurrentBib Danisik \BOthers. [\APACyear2018] \APACinsertmetastardanisik2018football{APACrefauthors}Danisik, N., Lacko, P.\BCBL Farkas, M.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleFootball match prediction using players attributes Football match prediction using players attributes.\BBCQ \APACrefbtitle2018 World Symposium on Digital Intelligence for Systems and Machines (DISA) 2018 world symposium on digital intelligence for systems and machines (disa) (\BPGS 201–206). \PrintBackRefs\CurrentBib Decroos \BOthers. [\APACyear2019] \APACinsertmetastardecroos2019actions{APACrefauthors}Decroos, T., Bransen, L., Van Haaren, J.\BCBL Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleActions speak louder than goals: Valuing player actions in soccer Actions speak louder than goals: Valuing player actions in soccer.\BBCQ \APACrefbtitleProceedings of the 25th ACM SIGKDD international conference on knowledge discovery & data mining Proceedings of the 25th acm sigkdd international conference on knowledge discovery & data mining (\BPGS 1851–1861). \PrintBackRefs\CurrentBib Dixon \BBA Coles [\APACyear1997] \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarberrar2019incorporating{APACrefauthors}Berrar, D., Lopes, P.\BCBL Dubitzky, W.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleIncorporating domain knowledge in machine learning for soccer outcome prediction Incorporating domain knowledge in machine learning for soccer outcome prediction.\BBCQ \APACjournalVolNumPagesMachine learning10897–126, \PrintBackRefs\CurrentBib Bunker \BBA Susnjak [\APACyear2022] \APACinsertmetastarbunker2022application{APACrefauthors}Bunker, R.\BCBT \BBA Susnjak, T.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleThe application of machine learning techniques for predicting match results in team sport: A review The application of machine learning techniques for predicting match results in team sport: A review.\BBCQ \APACjournalVolNumPagesJournal of Artificial Intelligence Research731285–1322, \PrintBackRefs\CurrentBib Chen \BBA Guestrin [\APACyear2016] \APACinsertmetastarchen2016xgboost{APACrefauthors}Chen, T.\BCBT \BBA Guestrin, C.  \APACrefYearMonthDay2016. \BBOQ\APACrefatitleXgboost: A scalable tree boosting system Xgboost: A scalable tree boosting system.\BBCQ \APACrefbtitleProceedings of the 22nd acm sigkdd international conference on knowledge discovery and data mining Proceedings of the 22nd acm sigkdd international conference on knowledge discovery and data mining (\BPGS 785–794). \PrintBackRefs\CurrentBib Chung \BOthers. 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[\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. 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[\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarbunker2022application{APACrefauthors}Bunker, R.\BCBT \BBA Susnjak, T.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleThe application of machine learning techniques for predicting match results in team sport: A review The application of machine learning techniques for predicting match results in team sport: A review.\BBCQ \APACjournalVolNumPagesJournal of Artificial Intelligence Research731285–1322, \PrintBackRefs\CurrentBib Chen \BBA Guestrin [\APACyear2016] \APACinsertmetastarchen2016xgboost{APACrefauthors}Chen, T.\BCBT \BBA Guestrin, C.  \APACrefYearMonthDay2016. \BBOQ\APACrefatitleXgboost: A scalable tree boosting system Xgboost: A scalable tree boosting system.\BBCQ \APACrefbtitleProceedings of the 22nd acm sigkdd international conference on knowledge discovery and data mining Proceedings of the 22nd acm sigkdd international conference on knowledge discovery and data mining (\BPGS 785–794). \PrintBackRefs\CurrentBib Chung \BOthers. [\APACyear2014] \APACinsertmetastarchung2014empirical{APACrefauthors}Chung, J., Gulcehre, C., Cho, K.\BCBL Bengio, Y.  \APACrefYearMonthDay2014. \BBOQ\APACrefatitleEmpirical evaluation of gated recurrent neural networks on sequence modeling Empirical evaluation of gated recurrent neural networks on sequence modeling.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:1412.3555, \PrintBackRefs\CurrentBib Constantinou [\APACyear2019] \APACinsertmetastarconstantinou2019dolores{APACrefauthors}Constantinou, A.C.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleDolores: a model that predicts football match outcomes from all over the world Dolores: a model that predicts football match outcomes from all over the world.\BBCQ \APACjournalVolNumPagesMachine learning108149–75, \PrintBackRefs\CurrentBib Constantinou \BBA Fenton [\APACyear2012] \APACinsertmetastarconstantinou2012solving{APACrefauthors}Constantinou, A.C.\BCBT \BBA Fenton, N.E.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleSolving the problem of inadequate scoring rules for assessing probabilistic football forecast models Solving the problem of inadequate scoring rules for assessing probabilistic football forecast models.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports81, \PrintBackRefs\CurrentBib Constantinou \BBA Fenton [\APACyear2013] \APACinsertmetastarconstantinou2013determining{APACrefauthors}Constantinou, A.C.\BCBT \BBA Fenton, N.E.  \APACrefYearMonthDay2013. \BBOQ\APACrefatitleDetermining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries Determining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports9137–50, \PrintBackRefs\CurrentBib Danisik \BOthers. [\APACyear2018] \APACinsertmetastardanisik2018football{APACrefauthors}Danisik, N., Lacko, P.\BCBL Farkas, M.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleFootball match prediction using players attributes Football match prediction using players attributes.\BBCQ \APACrefbtitle2018 World Symposium on Digital Intelligence for Systems and Machines (DISA) 2018 world symposium on digital intelligence for systems and machines (disa) (\BPGS 201–206). \PrintBackRefs\CurrentBib Decroos \BOthers. [\APACyear2019] \APACinsertmetastardecroos2019actions{APACrefauthors}Decroos, T., Bransen, L., Van Haaren, J.\BCBL Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleActions speak louder than goals: Valuing player actions in soccer Actions speak louder than goals: Valuing player actions in soccer.\BBCQ \APACrefbtitleProceedings of the 25th ACM SIGKDD international conference on knowledge discovery & data mining Proceedings of the 25th acm sigkdd international conference on knowledge discovery & data mining (\BPGS 1851–1861). \PrintBackRefs\CurrentBib Dixon \BBA Coles [\APACyear1997] \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. 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[\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. 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[\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. 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[\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarchen2016xgboost{APACrefauthors}Chen, T.\BCBT \BBA Guestrin, C.  \APACrefYearMonthDay2016. \BBOQ\APACrefatitleXgboost: A scalable tree boosting system Xgboost: A scalable tree boosting system.\BBCQ \APACrefbtitleProceedings of the 22nd acm sigkdd international conference on knowledge discovery and data mining Proceedings of the 22nd acm sigkdd international conference on knowledge discovery and data mining (\BPGS 785–794). \PrintBackRefs\CurrentBib Chung \BOthers. 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[\APACyear2019] \APACinsertmetastardecroos2019actions{APACrefauthors}Decroos, T., Bransen, L., Van Haaren, J.\BCBL Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleActions speak louder than goals: Valuing player actions in soccer Actions speak louder than goals: Valuing player actions in soccer.\BBCQ \APACrefbtitleProceedings of the 25th ACM SIGKDD international conference on knowledge discovery & data mining Proceedings of the 25th acm sigkdd international conference on knowledge discovery & data mining (\BPGS 1851–1861). \PrintBackRefs\CurrentBib Dixon \BBA Coles [\APACyear1997] \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarchung2014empirical{APACrefauthors}Chung, J., Gulcehre, C., Cho, K.\BCBL Bengio, Y.  \APACrefYearMonthDay2014. \BBOQ\APACrefatitleEmpirical evaluation of gated recurrent neural networks on sequence modeling Empirical evaluation of gated recurrent neural networks on sequence modeling.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:1412.3555, \PrintBackRefs\CurrentBib Constantinou [\APACyear2019] \APACinsertmetastarconstantinou2019dolores{APACrefauthors}Constantinou, A.C.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleDolores: a model that predicts football match outcomes from all over the world Dolores: a model that predicts football match outcomes from all over the world.\BBCQ \APACjournalVolNumPagesMachine learning108149–75, \PrintBackRefs\CurrentBib Constantinou \BBA Fenton [\APACyear2012] \APACinsertmetastarconstantinou2012solving{APACrefauthors}Constantinou, A.C.\BCBT \BBA Fenton, N.E.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleSolving the problem of inadequate scoring rules for assessing probabilistic football forecast models Solving the problem of inadequate scoring rules for assessing probabilistic football forecast models.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports81, \PrintBackRefs\CurrentBib Constantinou \BBA Fenton [\APACyear2013] \APACinsertmetastarconstantinou2013determining{APACrefauthors}Constantinou, A.C.\BCBT \BBA Fenton, N.E.  \APACrefYearMonthDay2013. \BBOQ\APACrefatitleDetermining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries Determining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports9137–50, \PrintBackRefs\CurrentBib Danisik \BOthers. [\APACyear2018] \APACinsertmetastardanisik2018football{APACrefauthors}Danisik, N., Lacko, P.\BCBL Farkas, M.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleFootball match prediction using players attributes Football match prediction using players attributes.\BBCQ \APACrefbtitle2018 World Symposium on Digital Intelligence for Systems and Machines (DISA) 2018 world symposium on digital intelligence for systems and machines (disa) (\BPGS 201–206). \PrintBackRefs\CurrentBib Decroos \BOthers. [\APACyear2019] \APACinsertmetastardecroos2019actions{APACrefauthors}Decroos, T., Bransen, L., Van Haaren, J.\BCBL Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleActions speak louder than goals: Valuing player actions in soccer Actions speak louder than goals: Valuing player actions in soccer.\BBCQ \APACrefbtitleProceedings of the 25th ACM SIGKDD international conference on knowledge discovery & data mining Proceedings of the 25th acm sigkdd international conference on knowledge discovery & data mining (\BPGS 1851–1861). \PrintBackRefs\CurrentBib Dixon \BBA Coles [\APACyear1997] \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarconstantinou2019dolores{APACrefauthors}Constantinou, A.C.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleDolores: a model that predicts football match outcomes from all over the world Dolores: a model that predicts football match outcomes from all over the world.\BBCQ \APACjournalVolNumPagesMachine learning108149–75, \PrintBackRefs\CurrentBib Constantinou \BBA Fenton [\APACyear2012] \APACinsertmetastarconstantinou2012solving{APACrefauthors}Constantinou, A.C.\BCBT \BBA Fenton, N.E.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleSolving the problem of inadequate scoring rules for assessing probabilistic football forecast models Solving the problem of inadequate scoring rules for assessing probabilistic football forecast models.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports81, \PrintBackRefs\CurrentBib Constantinou \BBA Fenton [\APACyear2013] \APACinsertmetastarconstantinou2013determining{APACrefauthors}Constantinou, A.C.\BCBT \BBA Fenton, N.E.  \APACrefYearMonthDay2013. \BBOQ\APACrefatitleDetermining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries Determining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports9137–50, \PrintBackRefs\CurrentBib Danisik \BOthers. [\APACyear2018] \APACinsertmetastardanisik2018football{APACrefauthors}Danisik, N., Lacko, P.\BCBL Farkas, M.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleFootball match prediction using players attributes Football match prediction using players attributes.\BBCQ \APACrefbtitle2018 World Symposium on Digital Intelligence for Systems and Machines (DISA) 2018 world symposium on digital intelligence for systems and machines (disa) (\BPGS 201–206). \PrintBackRefs\CurrentBib Decroos \BOthers. [\APACyear2019] \APACinsertmetastardecroos2019actions{APACrefauthors}Decroos, T., Bransen, L., Van Haaren, J.\BCBL Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleActions speak louder than goals: Valuing player actions in soccer Actions speak louder than goals: Valuing player actions in soccer.\BBCQ \APACrefbtitleProceedings of the 25th ACM SIGKDD international conference on knowledge discovery & data mining Proceedings of the 25th acm sigkdd international conference on knowledge discovery & data mining (\BPGS 1851–1861). \PrintBackRefs\CurrentBib Dixon \BBA Coles [\APACyear1997] \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. 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[\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarconstantinou2012solving{APACrefauthors}Constantinou, A.C.\BCBT \BBA Fenton, N.E.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleSolving the problem of inadequate scoring rules for assessing probabilistic football forecast models Solving the problem of inadequate scoring rules for assessing probabilistic football forecast models.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports81, \PrintBackRefs\CurrentBib Constantinou \BBA Fenton [\APACyear2013] \APACinsertmetastarconstantinou2013determining{APACrefauthors}Constantinou, A.C.\BCBT \BBA Fenton, N.E.  \APACrefYearMonthDay2013. \BBOQ\APACrefatitleDetermining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries Determining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports9137–50, \PrintBackRefs\CurrentBib Danisik \BOthers. [\APACyear2018] \APACinsertmetastardanisik2018football{APACrefauthors}Danisik, N., Lacko, P.\BCBL Farkas, M.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleFootball match prediction using players attributes Football match prediction using players attributes.\BBCQ \APACrefbtitle2018 World Symposium on Digital Intelligence for Systems and Machines (DISA) 2018 world symposium on digital intelligence for systems and machines (disa) (\BPGS 201–206). \PrintBackRefs\CurrentBib Decroos \BOthers. [\APACyear2019] \APACinsertmetastardecroos2019actions{APACrefauthors}Decroos, T., Bransen, L., Van Haaren, J.\BCBL Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleActions speak louder than goals: Valuing player actions in soccer Actions speak louder than goals: Valuing player actions in soccer.\BBCQ \APACrefbtitleProceedings of the 25th ACM SIGKDD international conference on knowledge discovery & data mining Proceedings of the 25th acm sigkdd international conference on knowledge discovery & data mining (\BPGS 1851–1861). \PrintBackRefs\CurrentBib Dixon \BBA Coles [\APACyear1997] \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarconstantinou2013determining{APACrefauthors}Constantinou, A.C.\BCBT \BBA Fenton, N.E.  \APACrefYearMonthDay2013. \BBOQ\APACrefatitleDetermining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries Determining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports9137–50, \PrintBackRefs\CurrentBib Danisik \BOthers. [\APACyear2018] \APACinsertmetastardanisik2018football{APACrefauthors}Danisik, N., Lacko, P.\BCBL Farkas, M.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleFootball match prediction using players attributes Football match prediction using players attributes.\BBCQ \APACrefbtitle2018 World Symposium on Digital Intelligence for Systems and Machines (DISA) 2018 world symposium on digital intelligence for systems and machines (disa) (\BPGS 201–206). \PrintBackRefs\CurrentBib Decroos \BOthers. [\APACyear2019] \APACinsertmetastardecroos2019actions{APACrefauthors}Decroos, T., Bransen, L., Van Haaren, J.\BCBL Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleActions speak louder than goals: Valuing player actions in soccer Actions speak louder than goals: Valuing player actions in soccer.\BBCQ \APACrefbtitleProceedings of the 25th ACM SIGKDD international conference on knowledge discovery & data mining Proceedings of the 25th acm sigkdd international conference on knowledge discovery & data mining (\BPGS 1851–1861). \PrintBackRefs\CurrentBib Dixon \BBA Coles [\APACyear1997] \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastardanisik2018football{APACrefauthors}Danisik, N., Lacko, P.\BCBL Farkas, M.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleFootball match prediction using players attributes Football match prediction using players attributes.\BBCQ \APACrefbtitle2018 World Symposium on Digital Intelligence for Systems and Machines (DISA) 2018 world symposium on digital intelligence for systems and machines (disa) (\BPGS 201–206). \PrintBackRefs\CurrentBib Decroos \BOthers. [\APACyear2019] \APACinsertmetastardecroos2019actions{APACrefauthors}Decroos, T., Bransen, L., Van Haaren, J.\BCBL Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleActions speak louder than goals: Valuing player actions in soccer Actions speak louder than goals: Valuing player actions in soccer.\BBCQ \APACrefbtitleProceedings of the 25th ACM SIGKDD international conference on knowledge discovery & data mining Proceedings of the 25th acm sigkdd international conference on knowledge discovery & data mining (\BPGS 1851–1861). \PrintBackRefs\CurrentBib Dixon \BBA Coles [\APACyear1997] \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastardecroos2019actions{APACrefauthors}Decroos, T., Bransen, L., Van Haaren, J.\BCBL Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleActions speak louder than goals: Valuing player actions in soccer Actions speak louder than goals: Valuing player actions in soccer.\BBCQ \APACrefbtitleProceedings of the 25th ACM SIGKDD international conference on knowledge discovery & data mining Proceedings of the 25th acm sigkdd international conference on knowledge discovery & data mining (\BPGS 1851–1861). \PrintBackRefs\CurrentBib Dixon \BBA Coles [\APACyear1997] \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. 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[\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarberrar2019guest{APACrefauthors}Berrar, D., Lopes, P., Davis, J.\BCBL Dubitzky, W.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleGuest editorial: special issue on machine learning for soccer Guest editorial: special issue on machine learning for soccer.\BBCQ \APACjournalVolNumPagesMachine Learning1081–7, \PrintBackRefs\CurrentBib Berrar, Lopes\BCBL \BBA Dubitzky [\APACyear2019] \APACinsertmetastarberrar2019incorporating{APACrefauthors}Berrar, D., Lopes, P.\BCBL Dubitzky, W.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleIncorporating domain knowledge in machine learning for soccer outcome prediction Incorporating domain knowledge in machine learning for soccer outcome prediction.\BBCQ \APACjournalVolNumPagesMachine learning10897–126, \PrintBackRefs\CurrentBib Bunker \BBA Susnjak [\APACyear2022] \APACinsertmetastarbunker2022application{APACrefauthors}Bunker, R.\BCBT \BBA Susnjak, T.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleThe application of machine learning techniques for predicting match results in team sport: A review The application of machine learning techniques for predicting match results in team sport: A review.\BBCQ \APACjournalVolNumPagesJournal of Artificial Intelligence Research731285–1322, \PrintBackRefs\CurrentBib Chen \BBA Guestrin [\APACyear2016] \APACinsertmetastarchen2016xgboost{APACrefauthors}Chen, T.\BCBT \BBA Guestrin, C.  \APACrefYearMonthDay2016. \BBOQ\APACrefatitleXgboost: A scalable tree boosting system Xgboost: A scalable tree boosting system.\BBCQ \APACrefbtitleProceedings of the 22nd acm sigkdd international conference on knowledge discovery and data mining Proceedings of the 22nd acm sigkdd international conference on knowledge discovery and data mining (\BPGS 785–794). \PrintBackRefs\CurrentBib Chung \BOthers. 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[\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarberrar2019incorporating{APACrefauthors}Berrar, D., Lopes, P.\BCBL Dubitzky, W.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleIncorporating domain knowledge in machine learning for soccer outcome prediction Incorporating domain knowledge in machine learning for soccer outcome prediction.\BBCQ \APACjournalVolNumPagesMachine learning10897–126, \PrintBackRefs\CurrentBib Bunker \BBA Susnjak [\APACyear2022] \APACinsertmetastarbunker2022application{APACrefauthors}Bunker, R.\BCBT \BBA Susnjak, T.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleThe application of machine learning techniques for predicting match results in team sport: A review The application of machine learning techniques for predicting match results in team sport: A review.\BBCQ \APACjournalVolNumPagesJournal of Artificial Intelligence Research731285–1322, \PrintBackRefs\CurrentBib Chen \BBA Guestrin [\APACyear2016] \APACinsertmetastarchen2016xgboost{APACrefauthors}Chen, T.\BCBT \BBA Guestrin, C.  \APACrefYearMonthDay2016. \BBOQ\APACrefatitleXgboost: A scalable tree boosting system Xgboost: A scalable tree boosting system.\BBCQ \APACrefbtitleProceedings of the 22nd acm sigkdd international conference on knowledge discovery and data mining Proceedings of the 22nd acm sigkdd international conference on knowledge discovery and data mining (\BPGS 785–794). \PrintBackRefs\CurrentBib Chung \BOthers. [\APACyear2014] \APACinsertmetastarchung2014empirical{APACrefauthors}Chung, J., Gulcehre, C., Cho, K.\BCBL Bengio, Y.  \APACrefYearMonthDay2014. \BBOQ\APACrefatitleEmpirical evaluation of gated recurrent neural networks on sequence modeling Empirical evaluation of gated recurrent neural networks on sequence modeling.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:1412.3555, \PrintBackRefs\CurrentBib Constantinou [\APACyear2019] \APACinsertmetastarconstantinou2019dolores{APACrefauthors}Constantinou, A.C.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleDolores: a model that predicts football match outcomes from all over the world Dolores: a model that predicts football match outcomes from all over the world.\BBCQ \APACjournalVolNumPagesMachine learning108149–75, \PrintBackRefs\CurrentBib Constantinou \BBA Fenton [\APACyear2012] \APACinsertmetastarconstantinou2012solving{APACrefauthors}Constantinou, A.C.\BCBT \BBA Fenton, N.E.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleSolving the problem of inadequate scoring rules for assessing probabilistic football forecast models Solving the problem of inadequate scoring rules for assessing probabilistic football forecast models.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports81, \PrintBackRefs\CurrentBib Constantinou \BBA Fenton [\APACyear2013] \APACinsertmetastarconstantinou2013determining{APACrefauthors}Constantinou, A.C.\BCBT \BBA Fenton, N.E.  \APACrefYearMonthDay2013. \BBOQ\APACrefatitleDetermining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries Determining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports9137–50, \PrintBackRefs\CurrentBib Danisik \BOthers. [\APACyear2018] \APACinsertmetastardanisik2018football{APACrefauthors}Danisik, N., Lacko, P.\BCBL Farkas, M.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleFootball match prediction using players attributes Football match prediction using players attributes.\BBCQ \APACrefbtitle2018 World Symposium on Digital Intelligence for Systems and Machines (DISA) 2018 world symposium on digital intelligence for systems and machines (disa) (\BPGS 201–206). \PrintBackRefs\CurrentBib Decroos \BOthers. [\APACyear2019] \APACinsertmetastardecroos2019actions{APACrefauthors}Decroos, T., Bransen, L., Van Haaren, J.\BCBL Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleActions speak louder than goals: Valuing player actions in soccer Actions speak louder than goals: Valuing player actions in soccer.\BBCQ \APACrefbtitleProceedings of the 25th ACM SIGKDD international conference on knowledge discovery & data mining Proceedings of the 25th acm sigkdd international conference on knowledge discovery & data mining (\BPGS 1851–1861). \PrintBackRefs\CurrentBib Dixon \BBA Coles [\APACyear1997] \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarbunker2022application{APACrefauthors}Bunker, R.\BCBT \BBA Susnjak, T.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleThe application of machine learning techniques for predicting match results in team sport: A review The application of machine learning techniques for predicting match results in team sport: A review.\BBCQ \APACjournalVolNumPagesJournal of Artificial Intelligence Research731285–1322, \PrintBackRefs\CurrentBib Chen \BBA Guestrin [\APACyear2016] \APACinsertmetastarchen2016xgboost{APACrefauthors}Chen, T.\BCBT \BBA Guestrin, C.  \APACrefYearMonthDay2016. \BBOQ\APACrefatitleXgboost: A scalable tree boosting system Xgboost: A scalable tree boosting system.\BBCQ \APACrefbtitleProceedings of the 22nd acm sigkdd international conference on knowledge discovery and data mining Proceedings of the 22nd acm sigkdd international conference on knowledge discovery and data mining (\BPGS 785–794). \PrintBackRefs\CurrentBib Chung \BOthers. [\APACyear2014] \APACinsertmetastarchung2014empirical{APACrefauthors}Chung, J., Gulcehre, C., Cho, K.\BCBL Bengio, Y.  \APACrefYearMonthDay2014. \BBOQ\APACrefatitleEmpirical evaluation of gated recurrent neural networks on sequence modeling Empirical evaluation of gated recurrent neural networks on sequence modeling.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:1412.3555, \PrintBackRefs\CurrentBib Constantinou [\APACyear2019] \APACinsertmetastarconstantinou2019dolores{APACrefauthors}Constantinou, A.C.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleDolores: a model that predicts football match outcomes from all over the world Dolores: a model that predicts football match outcomes from all over the world.\BBCQ \APACjournalVolNumPagesMachine learning108149–75, \PrintBackRefs\CurrentBib Constantinou \BBA Fenton [\APACyear2012] \APACinsertmetastarconstantinou2012solving{APACrefauthors}Constantinou, A.C.\BCBT \BBA Fenton, N.E.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleSolving the problem of inadequate scoring rules for assessing probabilistic football forecast models Solving the problem of inadequate scoring rules for assessing probabilistic football forecast models.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports81, \PrintBackRefs\CurrentBib Constantinou \BBA Fenton [\APACyear2013] \APACinsertmetastarconstantinou2013determining{APACrefauthors}Constantinou, A.C.\BCBT \BBA Fenton, N.E.  \APACrefYearMonthDay2013. \BBOQ\APACrefatitleDetermining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries Determining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports9137–50, \PrintBackRefs\CurrentBib Danisik \BOthers. [\APACyear2018] \APACinsertmetastardanisik2018football{APACrefauthors}Danisik, N., Lacko, P.\BCBL Farkas, M.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleFootball match prediction using players attributes Football match prediction using players attributes.\BBCQ \APACrefbtitle2018 World Symposium on Digital Intelligence for Systems and Machines (DISA) 2018 world symposium on digital intelligence for systems and machines (disa) (\BPGS 201–206). \PrintBackRefs\CurrentBib Decroos \BOthers. [\APACyear2019] \APACinsertmetastardecroos2019actions{APACrefauthors}Decroos, T., Bransen, L., Van Haaren, J.\BCBL Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleActions speak louder than goals: Valuing player actions in soccer Actions speak louder than goals: Valuing player actions in soccer.\BBCQ \APACrefbtitleProceedings of the 25th ACM SIGKDD international conference on knowledge discovery & data mining Proceedings of the 25th acm sigkdd international conference on knowledge discovery & data mining (\BPGS 1851–1861). \PrintBackRefs\CurrentBib Dixon \BBA Coles [\APACyear1997] \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarchen2016xgboost{APACrefauthors}Chen, T.\BCBT \BBA Guestrin, C.  \APACrefYearMonthDay2016. \BBOQ\APACrefatitleXgboost: A scalable tree boosting system Xgboost: A scalable tree boosting system.\BBCQ \APACrefbtitleProceedings of the 22nd acm sigkdd international conference on knowledge discovery and data mining Proceedings of the 22nd acm sigkdd international conference on knowledge discovery and data mining (\BPGS 785–794). \PrintBackRefs\CurrentBib Chung \BOthers. 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[\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarchung2014empirical{APACrefauthors}Chung, J., Gulcehre, C., Cho, K.\BCBL Bengio, Y.  \APACrefYearMonthDay2014. \BBOQ\APACrefatitleEmpirical evaluation of gated recurrent neural networks on sequence modeling Empirical evaluation of gated recurrent neural networks on sequence modeling.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:1412.3555, \PrintBackRefs\CurrentBib Constantinou [\APACyear2019] \APACinsertmetastarconstantinou2019dolores{APACrefauthors}Constantinou, A.C.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleDolores: a model that predicts football match outcomes from all over the world Dolores: a model that predicts football match outcomes from all over the world.\BBCQ \APACjournalVolNumPagesMachine learning108149–75, \PrintBackRefs\CurrentBib Constantinou \BBA Fenton [\APACyear2012] \APACinsertmetastarconstantinou2012solving{APACrefauthors}Constantinou, A.C.\BCBT \BBA Fenton, N.E.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleSolving the problem of inadequate scoring rules for assessing probabilistic football forecast models Solving the problem of inadequate scoring rules for assessing probabilistic football forecast models.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports81, \PrintBackRefs\CurrentBib Constantinou \BBA Fenton [\APACyear2013] \APACinsertmetastarconstantinou2013determining{APACrefauthors}Constantinou, A.C.\BCBT \BBA Fenton, N.E.  \APACrefYearMonthDay2013. \BBOQ\APACrefatitleDetermining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries Determining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports9137–50, \PrintBackRefs\CurrentBib Danisik \BOthers. [\APACyear2018] \APACinsertmetastardanisik2018football{APACrefauthors}Danisik, N., Lacko, P.\BCBL Farkas, M.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleFootball match prediction using players attributes Football match prediction using players attributes.\BBCQ \APACrefbtitle2018 World Symposium on Digital Intelligence for Systems and Machines (DISA) 2018 world symposium on digital intelligence for systems and machines (disa) (\BPGS 201–206). \PrintBackRefs\CurrentBib Decroos \BOthers. [\APACyear2019] \APACinsertmetastardecroos2019actions{APACrefauthors}Decroos, T., Bransen, L., Van Haaren, J.\BCBL Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleActions speak louder than goals: Valuing player actions in soccer Actions speak louder than goals: Valuing player actions in soccer.\BBCQ \APACrefbtitleProceedings of the 25th ACM SIGKDD international conference on knowledge discovery & data mining Proceedings of the 25th acm sigkdd international conference on knowledge discovery & data mining (\BPGS 1851–1861). \PrintBackRefs\CurrentBib Dixon \BBA Coles [\APACyear1997] \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarconstantinou2019dolores{APACrefauthors}Constantinou, A.C.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleDolores: a model that predicts football match outcomes from all over the world Dolores: a model that predicts football match outcomes from all over the world.\BBCQ \APACjournalVolNumPagesMachine learning108149–75, \PrintBackRefs\CurrentBib Constantinou \BBA Fenton [\APACyear2012] \APACinsertmetastarconstantinou2012solving{APACrefauthors}Constantinou, A.C.\BCBT \BBA Fenton, N.E.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleSolving the problem of inadequate scoring rules for assessing probabilistic football forecast models Solving the problem of inadequate scoring rules for assessing probabilistic football forecast models.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports81, \PrintBackRefs\CurrentBib Constantinou \BBA Fenton [\APACyear2013] \APACinsertmetastarconstantinou2013determining{APACrefauthors}Constantinou, A.C.\BCBT \BBA Fenton, N.E.  \APACrefYearMonthDay2013. \BBOQ\APACrefatitleDetermining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries Determining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports9137–50, \PrintBackRefs\CurrentBib Danisik \BOthers. [\APACyear2018] \APACinsertmetastardanisik2018football{APACrefauthors}Danisik, N., Lacko, P.\BCBL Farkas, M.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleFootball match prediction using players attributes Football match prediction using players attributes.\BBCQ \APACrefbtitle2018 World Symposium on Digital Intelligence for Systems and Machines (DISA) 2018 world symposium on digital intelligence for systems and machines (disa) (\BPGS 201–206). \PrintBackRefs\CurrentBib Decroos \BOthers. [\APACyear2019] \APACinsertmetastardecroos2019actions{APACrefauthors}Decroos, T., Bransen, L., Van Haaren, J.\BCBL Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleActions speak louder than goals: Valuing player actions in soccer Actions speak louder than goals: Valuing player actions in soccer.\BBCQ \APACrefbtitleProceedings of the 25th ACM SIGKDD international conference on knowledge discovery & data mining Proceedings of the 25th acm sigkdd international conference on knowledge discovery & data mining (\BPGS 1851–1861). \PrintBackRefs\CurrentBib Dixon \BBA Coles [\APACyear1997] \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarconstantinou2012solving{APACrefauthors}Constantinou, A.C.\BCBT \BBA Fenton, N.E.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleSolving the problem of inadequate scoring rules for assessing probabilistic football forecast models Solving the problem of inadequate scoring rules for assessing probabilistic football forecast models.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports81, \PrintBackRefs\CurrentBib Constantinou \BBA Fenton [\APACyear2013] \APACinsertmetastarconstantinou2013determining{APACrefauthors}Constantinou, A.C.\BCBT \BBA Fenton, N.E.  \APACrefYearMonthDay2013. \BBOQ\APACrefatitleDetermining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries Determining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports9137–50, \PrintBackRefs\CurrentBib Danisik \BOthers. [\APACyear2018] \APACinsertmetastardanisik2018football{APACrefauthors}Danisik, N., Lacko, P.\BCBL Farkas, M.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleFootball match prediction using players attributes Football match prediction using players attributes.\BBCQ \APACrefbtitle2018 World Symposium on Digital Intelligence for Systems and Machines (DISA) 2018 world symposium on digital intelligence for systems and machines (disa) (\BPGS 201–206). \PrintBackRefs\CurrentBib Decroos \BOthers. [\APACyear2019] \APACinsertmetastardecroos2019actions{APACrefauthors}Decroos, T., Bransen, L., Van Haaren, J.\BCBL Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleActions speak louder than goals: Valuing player actions in soccer Actions speak louder than goals: Valuing player actions in soccer.\BBCQ \APACrefbtitleProceedings of the 25th ACM SIGKDD international conference on knowledge discovery & data mining Proceedings of the 25th acm sigkdd international conference on knowledge discovery & data mining (\BPGS 1851–1861). \PrintBackRefs\CurrentBib Dixon \BBA Coles [\APACyear1997] \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarconstantinou2013determining{APACrefauthors}Constantinou, A.C.\BCBT \BBA Fenton, N.E.  \APACrefYearMonthDay2013. \BBOQ\APACrefatitleDetermining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries Determining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports9137–50, \PrintBackRefs\CurrentBib Danisik \BOthers. [\APACyear2018] \APACinsertmetastardanisik2018football{APACrefauthors}Danisik, N., Lacko, P.\BCBL Farkas, M.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleFootball match prediction using players attributes Football match prediction using players attributes.\BBCQ \APACrefbtitle2018 World Symposium on Digital Intelligence for Systems and Machines (DISA) 2018 world symposium on digital intelligence for systems and machines (disa) (\BPGS 201–206). \PrintBackRefs\CurrentBib Decroos \BOthers. [\APACyear2019] \APACinsertmetastardecroos2019actions{APACrefauthors}Decroos, T., Bransen, L., Van Haaren, J.\BCBL Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleActions speak louder than goals: Valuing player actions in soccer Actions speak louder than goals: Valuing player actions in soccer.\BBCQ \APACrefbtitleProceedings of the 25th ACM SIGKDD international conference on knowledge discovery & data mining Proceedings of the 25th acm sigkdd international conference on knowledge discovery & data mining (\BPGS 1851–1861). \PrintBackRefs\CurrentBib Dixon \BBA Coles [\APACyear1997] \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastardanisik2018football{APACrefauthors}Danisik, N., Lacko, P.\BCBL Farkas, M.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleFootball match prediction using players attributes Football match prediction using players attributes.\BBCQ \APACrefbtitle2018 World Symposium on Digital Intelligence for Systems and Machines (DISA) 2018 world symposium on digital intelligence for systems and machines (disa) (\BPGS 201–206). \PrintBackRefs\CurrentBib Decroos \BOthers. [\APACyear2019] \APACinsertmetastardecroos2019actions{APACrefauthors}Decroos, T., Bransen, L., Van Haaren, J.\BCBL Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleActions speak louder than goals: Valuing player actions in soccer Actions speak louder than goals: Valuing player actions in soccer.\BBCQ \APACrefbtitleProceedings of the 25th ACM SIGKDD international conference on knowledge discovery & data mining Proceedings of the 25th acm sigkdd international conference on knowledge discovery & data mining (\BPGS 1851–1861). \PrintBackRefs\CurrentBib Dixon \BBA Coles [\APACyear1997] \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastardecroos2019actions{APACrefauthors}Decroos, T., Bransen, L., Van Haaren, J.\BCBL Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleActions speak louder than goals: Valuing player actions in soccer Actions speak louder than goals: Valuing player actions in soccer.\BBCQ \APACrefbtitleProceedings of the 25th ACM SIGKDD international conference on knowledge discovery & data mining Proceedings of the 25th acm sigkdd international conference on knowledge discovery & data mining (\BPGS 1851–1861). \PrintBackRefs\CurrentBib Dixon \BBA Coles [\APACyear1997] \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. 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[\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarberrar2019incorporating{APACrefauthors}Berrar, D., Lopes, P.\BCBL Dubitzky, W.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleIncorporating domain knowledge in machine learning for soccer outcome prediction Incorporating domain knowledge in machine learning for soccer outcome prediction.\BBCQ \APACjournalVolNumPagesMachine learning10897–126, \PrintBackRefs\CurrentBib Bunker \BBA Susnjak [\APACyear2022] \APACinsertmetastarbunker2022application{APACrefauthors}Bunker, R.\BCBT \BBA Susnjak, T.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleThe application of machine learning techniques for predicting match results in team sport: A review The application of machine learning techniques for predicting match results in team sport: A review.\BBCQ \APACjournalVolNumPagesJournal of Artificial Intelligence Research731285–1322, \PrintBackRefs\CurrentBib Chen \BBA Guestrin [\APACyear2016] \APACinsertmetastarchen2016xgboost{APACrefauthors}Chen, T.\BCBT \BBA Guestrin, C.  \APACrefYearMonthDay2016. \BBOQ\APACrefatitleXgboost: A scalable tree boosting system Xgboost: A scalable tree boosting system.\BBCQ \APACrefbtitleProceedings of the 22nd acm sigkdd international conference on knowledge discovery and data mining Proceedings of the 22nd acm sigkdd international conference on knowledge discovery and data mining (\BPGS 785–794). \PrintBackRefs\CurrentBib Chung \BOthers. [\APACyear2014] \APACinsertmetastarchung2014empirical{APACrefauthors}Chung, J., Gulcehre, C., Cho, K.\BCBL Bengio, Y.  \APACrefYearMonthDay2014. \BBOQ\APACrefatitleEmpirical evaluation of gated recurrent neural networks on sequence modeling Empirical evaluation of gated recurrent neural networks on sequence modeling.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:1412.3555, \PrintBackRefs\CurrentBib Constantinou [\APACyear2019] \APACinsertmetastarconstantinou2019dolores{APACrefauthors}Constantinou, A.C.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleDolores: a model that predicts football match outcomes from all over the world Dolores: a model that predicts football match outcomes from all over the world.\BBCQ \APACjournalVolNumPagesMachine learning108149–75, \PrintBackRefs\CurrentBib Constantinou \BBA Fenton [\APACyear2012] \APACinsertmetastarconstantinou2012solving{APACrefauthors}Constantinou, A.C.\BCBT \BBA Fenton, N.E.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleSolving the problem of inadequate scoring rules for assessing probabilistic football forecast models Solving the problem of inadequate scoring rules for assessing probabilistic football forecast models.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports81, \PrintBackRefs\CurrentBib Constantinou \BBA Fenton [\APACyear2013] \APACinsertmetastarconstantinou2013determining{APACrefauthors}Constantinou, A.C.\BCBT \BBA Fenton, N.E.  \APACrefYearMonthDay2013. \BBOQ\APACrefatitleDetermining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries Determining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports9137–50, \PrintBackRefs\CurrentBib Danisik \BOthers. [\APACyear2018] \APACinsertmetastardanisik2018football{APACrefauthors}Danisik, N., Lacko, P.\BCBL Farkas, M.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleFootball match prediction using players attributes Football match prediction using players attributes.\BBCQ \APACrefbtitle2018 World Symposium on Digital Intelligence for Systems and Machines (DISA) 2018 world symposium on digital intelligence for systems and machines (disa) (\BPGS 201–206). \PrintBackRefs\CurrentBib Decroos \BOthers. [\APACyear2019] \APACinsertmetastardecroos2019actions{APACrefauthors}Decroos, T., Bransen, L., Van Haaren, J.\BCBL Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleActions speak louder than goals: Valuing player actions in soccer Actions speak louder than goals: Valuing player actions in soccer.\BBCQ \APACrefbtitleProceedings of the 25th ACM SIGKDD international conference on knowledge discovery & data mining Proceedings of the 25th acm sigkdd international conference on knowledge discovery & data mining (\BPGS 1851–1861). \PrintBackRefs\CurrentBib Dixon \BBA Coles [\APACyear1997] \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. 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[\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. 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[\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. 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[\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarbunker2022application{APACrefauthors}Bunker, R.\BCBT \BBA Susnjak, T.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleThe application of machine learning techniques for predicting match results in team sport: A review The application of machine learning techniques for predicting match results in team sport: A review.\BBCQ \APACjournalVolNumPagesJournal of Artificial Intelligence Research731285–1322, \PrintBackRefs\CurrentBib Chen \BBA Guestrin [\APACyear2016] \APACinsertmetastarchen2016xgboost{APACrefauthors}Chen, T.\BCBT \BBA Guestrin, C.  \APACrefYearMonthDay2016. \BBOQ\APACrefatitleXgboost: A scalable tree boosting system Xgboost: A scalable tree boosting system.\BBCQ \APACrefbtitleProceedings of the 22nd acm sigkdd international conference on knowledge discovery and data mining Proceedings of the 22nd acm sigkdd international conference on knowledge discovery and data mining (\BPGS 785–794). \PrintBackRefs\CurrentBib Chung \BOthers. [\APACyear2014] \APACinsertmetastarchung2014empirical{APACrefauthors}Chung, J., Gulcehre, C., Cho, K.\BCBL Bengio, Y.  \APACrefYearMonthDay2014. \BBOQ\APACrefatitleEmpirical evaluation of gated recurrent neural networks on sequence modeling Empirical evaluation of gated recurrent neural networks on sequence modeling.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:1412.3555, \PrintBackRefs\CurrentBib Constantinou [\APACyear2019] \APACinsertmetastarconstantinou2019dolores{APACrefauthors}Constantinou, A.C.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleDolores: a model that predicts football match outcomes from all over the world Dolores: a model that predicts football match outcomes from all over the world.\BBCQ \APACjournalVolNumPagesMachine learning108149–75, \PrintBackRefs\CurrentBib Constantinou \BBA Fenton [\APACyear2012] \APACinsertmetastarconstantinou2012solving{APACrefauthors}Constantinou, A.C.\BCBT \BBA Fenton, N.E.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleSolving the problem of inadequate scoring rules for assessing probabilistic football forecast models Solving the problem of inadequate scoring rules for assessing probabilistic football forecast models.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports81, \PrintBackRefs\CurrentBib Constantinou \BBA Fenton [\APACyear2013] \APACinsertmetastarconstantinou2013determining{APACrefauthors}Constantinou, A.C.\BCBT \BBA Fenton, N.E.  \APACrefYearMonthDay2013. \BBOQ\APACrefatitleDetermining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries Determining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports9137–50, \PrintBackRefs\CurrentBib Danisik \BOthers. [\APACyear2018] \APACinsertmetastardanisik2018football{APACrefauthors}Danisik, N., Lacko, P.\BCBL Farkas, M.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleFootball match prediction using players attributes Football match prediction using players attributes.\BBCQ \APACrefbtitle2018 World Symposium on Digital Intelligence for Systems and Machines (DISA) 2018 world symposium on digital intelligence for systems and machines (disa) (\BPGS 201–206). \PrintBackRefs\CurrentBib Decroos \BOthers. [\APACyear2019] \APACinsertmetastardecroos2019actions{APACrefauthors}Decroos, T., Bransen, L., Van Haaren, J.\BCBL Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleActions speak louder than goals: Valuing player actions in soccer Actions speak louder than goals: Valuing player actions in soccer.\BBCQ \APACrefbtitleProceedings of the 25th ACM SIGKDD international conference on knowledge discovery & data mining Proceedings of the 25th acm sigkdd international conference on knowledge discovery & data mining (\BPGS 1851–1861). \PrintBackRefs\CurrentBib Dixon \BBA Coles [\APACyear1997] \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarchen2016xgboost{APACrefauthors}Chen, T.\BCBT \BBA Guestrin, C.  \APACrefYearMonthDay2016. \BBOQ\APACrefatitleXgboost: A scalable tree boosting system Xgboost: A scalable tree boosting system.\BBCQ \APACrefbtitleProceedings of the 22nd acm sigkdd international conference on knowledge discovery and data mining Proceedings of the 22nd acm sigkdd international conference on knowledge discovery and data mining (\BPGS 785–794). \PrintBackRefs\CurrentBib Chung \BOthers. [\APACyear2014] \APACinsertmetastarchung2014empirical{APACrefauthors}Chung, J., Gulcehre, C., Cho, K.\BCBL Bengio, Y.  \APACrefYearMonthDay2014. \BBOQ\APACrefatitleEmpirical evaluation of gated recurrent neural networks on sequence modeling Empirical evaluation of gated recurrent neural networks on sequence modeling.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:1412.3555, \PrintBackRefs\CurrentBib Constantinou [\APACyear2019] \APACinsertmetastarconstantinou2019dolores{APACrefauthors}Constantinou, A.C.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleDolores: a model that predicts football match outcomes from all over the world Dolores: a model that predicts football match outcomes from all over the world.\BBCQ \APACjournalVolNumPagesMachine learning108149–75, \PrintBackRefs\CurrentBib Constantinou \BBA Fenton [\APACyear2012] \APACinsertmetastarconstantinou2012solving{APACrefauthors}Constantinou, A.C.\BCBT \BBA Fenton, N.E.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleSolving the problem of inadequate scoring rules for assessing probabilistic football forecast models Solving the problem of inadequate scoring rules for assessing probabilistic football forecast models.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports81, \PrintBackRefs\CurrentBib Constantinou \BBA Fenton [\APACyear2013] \APACinsertmetastarconstantinou2013determining{APACrefauthors}Constantinou, A.C.\BCBT \BBA Fenton, N.E.  \APACrefYearMonthDay2013. \BBOQ\APACrefatitleDetermining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries Determining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports9137–50, \PrintBackRefs\CurrentBib Danisik \BOthers. [\APACyear2018] \APACinsertmetastardanisik2018football{APACrefauthors}Danisik, N., Lacko, P.\BCBL Farkas, M.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleFootball match prediction using players attributes Football match prediction using players attributes.\BBCQ \APACrefbtitle2018 World Symposium on Digital Intelligence for Systems and Machines (DISA) 2018 world symposium on digital intelligence for systems and machines (disa) (\BPGS 201–206). \PrintBackRefs\CurrentBib Decroos \BOthers. [\APACyear2019] \APACinsertmetastardecroos2019actions{APACrefauthors}Decroos, T., Bransen, L., Van Haaren, J.\BCBL Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleActions speak louder than goals: Valuing player actions in soccer Actions speak louder than goals: Valuing player actions in soccer.\BBCQ \APACrefbtitleProceedings of the 25th ACM SIGKDD international conference on knowledge discovery & data mining Proceedings of the 25th acm sigkdd international conference on knowledge discovery & data mining (\BPGS 1851–1861). \PrintBackRefs\CurrentBib Dixon \BBA Coles [\APACyear1997] \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarchung2014empirical{APACrefauthors}Chung, J., Gulcehre, C., Cho, K.\BCBL Bengio, Y.  \APACrefYearMonthDay2014. \BBOQ\APACrefatitleEmpirical evaluation of gated recurrent neural networks on sequence modeling Empirical evaluation of gated recurrent neural networks on sequence modeling.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:1412.3555, \PrintBackRefs\CurrentBib Constantinou [\APACyear2019] \APACinsertmetastarconstantinou2019dolores{APACrefauthors}Constantinou, A.C.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleDolores: a model that predicts football match outcomes from all over the world Dolores: a model that predicts football match outcomes from all over the world.\BBCQ \APACjournalVolNumPagesMachine learning108149–75, \PrintBackRefs\CurrentBib Constantinou \BBA Fenton [\APACyear2012] \APACinsertmetastarconstantinou2012solving{APACrefauthors}Constantinou, A.C.\BCBT \BBA Fenton, N.E.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleSolving the problem of inadequate scoring rules for assessing probabilistic football forecast models Solving the problem of inadequate scoring rules for assessing probabilistic football forecast models.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports81, \PrintBackRefs\CurrentBib Constantinou \BBA Fenton [\APACyear2013] \APACinsertmetastarconstantinou2013determining{APACrefauthors}Constantinou, A.C.\BCBT \BBA Fenton, N.E.  \APACrefYearMonthDay2013. \BBOQ\APACrefatitleDetermining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries Determining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports9137–50, \PrintBackRefs\CurrentBib Danisik \BOthers. 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[\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. 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[\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. 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[\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarconstantinou2019dolores{APACrefauthors}Constantinou, A.C.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleDolores: a model that predicts football match outcomes from all over the world Dolores: a model that predicts football match outcomes from all over the world.\BBCQ \APACjournalVolNumPagesMachine learning108149–75, \PrintBackRefs\CurrentBib Constantinou \BBA Fenton [\APACyear2012] \APACinsertmetastarconstantinou2012solving{APACrefauthors}Constantinou, A.C.\BCBT \BBA Fenton, N.E.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleSolving the problem of inadequate scoring rules for assessing probabilistic football forecast models Solving the problem of inadequate scoring rules for assessing probabilistic football forecast models.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports81, \PrintBackRefs\CurrentBib Constantinou \BBA Fenton [\APACyear2013] \APACinsertmetastarconstantinou2013determining{APACrefauthors}Constantinou, A.C.\BCBT \BBA Fenton, N.E.  \APACrefYearMonthDay2013. \BBOQ\APACrefatitleDetermining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries Determining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports9137–50, \PrintBackRefs\CurrentBib Danisik \BOthers. [\APACyear2018] \APACinsertmetastardanisik2018football{APACrefauthors}Danisik, N., Lacko, P.\BCBL Farkas, M.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleFootball match prediction using players attributes Football match prediction using players attributes.\BBCQ \APACrefbtitle2018 World Symposium on Digital Intelligence for Systems and Machines (DISA) 2018 world symposium on digital intelligence for systems and machines (disa) (\BPGS 201–206). \PrintBackRefs\CurrentBib Decroos \BOthers. [\APACyear2019] \APACinsertmetastardecroos2019actions{APACrefauthors}Decroos, T., Bransen, L., Van Haaren, J.\BCBL Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleActions speak louder than goals: Valuing player actions in soccer Actions speak louder than goals: Valuing player actions in soccer.\BBCQ \APACrefbtitleProceedings of the 25th ACM SIGKDD international conference on knowledge discovery & data mining Proceedings of the 25th acm sigkdd international conference on knowledge discovery & data mining (\BPGS 1851–1861). \PrintBackRefs\CurrentBib Dixon \BBA Coles [\APACyear1997] \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarconstantinou2012solving{APACrefauthors}Constantinou, A.C.\BCBT \BBA Fenton, N.E.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleSolving the problem of inadequate scoring rules for assessing probabilistic football forecast models Solving the problem of inadequate scoring rules for assessing probabilistic football forecast models.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports81, \PrintBackRefs\CurrentBib Constantinou \BBA Fenton [\APACyear2013] \APACinsertmetastarconstantinou2013determining{APACrefauthors}Constantinou, A.C.\BCBT \BBA Fenton, N.E.  \APACrefYearMonthDay2013. \BBOQ\APACrefatitleDetermining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries Determining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports9137–50, \PrintBackRefs\CurrentBib Danisik \BOthers. [\APACyear2018] \APACinsertmetastardanisik2018football{APACrefauthors}Danisik, N., Lacko, P.\BCBL Farkas, M.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleFootball match prediction using players attributes Football match prediction using players attributes.\BBCQ \APACrefbtitle2018 World Symposium on Digital Intelligence for Systems and Machines (DISA) 2018 world symposium on digital intelligence for systems and machines (disa) (\BPGS 201–206). \PrintBackRefs\CurrentBib Decroos \BOthers. [\APACyear2019] \APACinsertmetastardecroos2019actions{APACrefauthors}Decroos, T., Bransen, L., Van Haaren, J.\BCBL Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleActions speak louder than goals: Valuing player actions in soccer Actions speak louder than goals: Valuing player actions in soccer.\BBCQ \APACrefbtitleProceedings of the 25th ACM SIGKDD international conference on knowledge discovery & data mining Proceedings of the 25th acm sigkdd international conference on knowledge discovery & data mining (\BPGS 1851–1861). \PrintBackRefs\CurrentBib Dixon \BBA Coles [\APACyear1997] \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarconstantinou2013determining{APACrefauthors}Constantinou, A.C.\BCBT \BBA Fenton, N.E.  \APACrefYearMonthDay2013. \BBOQ\APACrefatitleDetermining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries Determining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports9137–50, \PrintBackRefs\CurrentBib Danisik \BOthers. [\APACyear2018] \APACinsertmetastardanisik2018football{APACrefauthors}Danisik, N., Lacko, P.\BCBL Farkas, M.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleFootball match prediction using players attributes Football match prediction using players attributes.\BBCQ \APACrefbtitle2018 World Symposium on Digital Intelligence for Systems and Machines (DISA) 2018 world symposium on digital intelligence for systems and machines (disa) (\BPGS 201–206). \PrintBackRefs\CurrentBib Decroos \BOthers. [\APACyear2019] \APACinsertmetastardecroos2019actions{APACrefauthors}Decroos, T., Bransen, L., Van Haaren, J.\BCBL Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleActions speak louder than goals: Valuing player actions in soccer Actions speak louder than goals: Valuing player actions in soccer.\BBCQ \APACrefbtitleProceedings of the 25th ACM SIGKDD international conference on knowledge discovery & data mining Proceedings of the 25th acm sigkdd international conference on knowledge discovery & data mining (\BPGS 1851–1861). \PrintBackRefs\CurrentBib Dixon \BBA Coles [\APACyear1997] \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastardanisik2018football{APACrefauthors}Danisik, N., Lacko, P.\BCBL Farkas, M.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleFootball match prediction using players attributes Football match prediction using players attributes.\BBCQ \APACrefbtitle2018 World Symposium on Digital Intelligence for Systems and Machines (DISA) 2018 world symposium on digital intelligence for systems and machines (disa) (\BPGS 201–206). \PrintBackRefs\CurrentBib Decroos \BOthers. [\APACyear2019] \APACinsertmetastardecroos2019actions{APACrefauthors}Decroos, T., Bransen, L., Van Haaren, J.\BCBL Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleActions speak louder than goals: Valuing player actions in soccer Actions speak louder than goals: Valuing player actions in soccer.\BBCQ \APACrefbtitleProceedings of the 25th ACM SIGKDD international conference on knowledge discovery & data mining Proceedings of the 25th acm sigkdd international conference on knowledge discovery & data mining (\BPGS 1851–1861). \PrintBackRefs\CurrentBib Dixon \BBA Coles [\APACyear1997] \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastardecroos2019actions{APACrefauthors}Decroos, T., Bransen, L., Van Haaren, J.\BCBL Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleActions speak louder than goals: Valuing player actions in soccer Actions speak louder than goals: Valuing player actions in soccer.\BBCQ \APACrefbtitleProceedings of the 25th ACM SIGKDD international conference on knowledge discovery & data mining Proceedings of the 25th acm sigkdd international conference on knowledge discovery & data mining (\BPGS 1851–1861). \PrintBackRefs\CurrentBib Dixon \BBA Coles [\APACyear1997] \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. 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[\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarbunker2022application{APACrefauthors}Bunker, R.\BCBT \BBA Susnjak, T.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleThe application of machine learning techniques for predicting match results in team sport: A review The application of machine learning techniques for predicting match results in team sport: A review.\BBCQ \APACjournalVolNumPagesJournal of Artificial Intelligence Research731285–1322, \PrintBackRefs\CurrentBib Chen \BBA Guestrin [\APACyear2016] \APACinsertmetastarchen2016xgboost{APACrefauthors}Chen, T.\BCBT \BBA Guestrin, C.  \APACrefYearMonthDay2016. \BBOQ\APACrefatitleXgboost: A scalable tree boosting system Xgboost: A scalable tree boosting system.\BBCQ \APACrefbtitleProceedings of the 22nd acm sigkdd international conference on knowledge discovery and data mining Proceedings of the 22nd acm sigkdd international conference on knowledge discovery and data mining (\BPGS 785–794). \PrintBackRefs\CurrentBib Chung \BOthers. [\APACyear2014] \APACinsertmetastarchung2014empirical{APACrefauthors}Chung, J., Gulcehre, C., Cho, K.\BCBL Bengio, Y.  \APACrefYearMonthDay2014. \BBOQ\APACrefatitleEmpirical evaluation of gated recurrent neural networks on sequence modeling Empirical evaluation of gated recurrent neural networks on sequence modeling.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:1412.3555, \PrintBackRefs\CurrentBib Constantinou [\APACyear2019] \APACinsertmetastarconstantinou2019dolores{APACrefauthors}Constantinou, A.C.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleDolores: a model that predicts football match outcomes from all over the world Dolores: a model that predicts football match outcomes from all over the world.\BBCQ \APACjournalVolNumPagesMachine learning108149–75, \PrintBackRefs\CurrentBib Constantinou \BBA Fenton [\APACyear2012] \APACinsertmetastarconstantinou2012solving{APACrefauthors}Constantinou, A.C.\BCBT \BBA Fenton, N.E.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleSolving the problem of inadequate scoring rules for assessing probabilistic football forecast models Solving the problem of inadequate scoring rules for assessing probabilistic football forecast models.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports81, \PrintBackRefs\CurrentBib Constantinou \BBA Fenton [\APACyear2013] \APACinsertmetastarconstantinou2013determining{APACrefauthors}Constantinou, A.C.\BCBT \BBA Fenton, N.E.  \APACrefYearMonthDay2013. \BBOQ\APACrefatitleDetermining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries Determining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports9137–50, \PrintBackRefs\CurrentBib Danisik \BOthers. [\APACyear2018] \APACinsertmetastardanisik2018football{APACrefauthors}Danisik, N., Lacko, P.\BCBL Farkas, M.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleFootball match prediction using players attributes Football match prediction using players attributes.\BBCQ \APACrefbtitle2018 World Symposium on Digital Intelligence for Systems and Machines (DISA) 2018 world symposium on digital intelligence for systems and machines (disa) (\BPGS 201–206). \PrintBackRefs\CurrentBib Decroos \BOthers. [\APACyear2019] \APACinsertmetastardecroos2019actions{APACrefauthors}Decroos, T., Bransen, L., Van Haaren, J.\BCBL Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleActions speak louder than goals: Valuing player actions in soccer Actions speak louder than goals: Valuing player actions in soccer.\BBCQ \APACrefbtitleProceedings of the 25th ACM SIGKDD international conference on knowledge discovery & data mining Proceedings of the 25th acm sigkdd international conference on knowledge discovery & data mining (\BPGS 1851–1861). \PrintBackRefs\CurrentBib Dixon \BBA Coles [\APACyear1997] \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. 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[\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. 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[\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. 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[\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarchen2016xgboost{APACrefauthors}Chen, T.\BCBT \BBA Guestrin, C.  \APACrefYearMonthDay2016. \BBOQ\APACrefatitleXgboost: A scalable tree boosting system Xgboost: A scalable tree boosting system.\BBCQ \APACrefbtitleProceedings of the 22nd acm sigkdd international conference on knowledge discovery and data mining Proceedings of the 22nd acm sigkdd international conference on knowledge discovery and data mining (\BPGS 785–794). \PrintBackRefs\CurrentBib Chung \BOthers. 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[\APACyear2019] \APACinsertmetastardecroos2019actions{APACrefauthors}Decroos, T., Bransen, L., Van Haaren, J.\BCBL Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleActions speak louder than goals: Valuing player actions in soccer Actions speak louder than goals: Valuing player actions in soccer.\BBCQ \APACrefbtitleProceedings of the 25th ACM SIGKDD international conference on knowledge discovery & data mining Proceedings of the 25th acm sigkdd international conference on knowledge discovery & data mining (\BPGS 1851–1861). \PrintBackRefs\CurrentBib Dixon \BBA Coles [\APACyear1997] \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarchung2014empirical{APACrefauthors}Chung, J., Gulcehre, C., Cho, K.\BCBL Bengio, Y.  \APACrefYearMonthDay2014. \BBOQ\APACrefatitleEmpirical evaluation of gated recurrent neural networks on sequence modeling Empirical evaluation of gated recurrent neural networks on sequence modeling.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:1412.3555, \PrintBackRefs\CurrentBib Constantinou [\APACyear2019] \APACinsertmetastarconstantinou2019dolores{APACrefauthors}Constantinou, A.C.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleDolores: a model that predicts football match outcomes from all over the world Dolores: a model that predicts football match outcomes from all over the world.\BBCQ \APACjournalVolNumPagesMachine learning108149–75, \PrintBackRefs\CurrentBib Constantinou \BBA Fenton [\APACyear2012] \APACinsertmetastarconstantinou2012solving{APACrefauthors}Constantinou, A.C.\BCBT \BBA Fenton, N.E.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleSolving the problem of inadequate scoring rules for assessing probabilistic football forecast models Solving the problem of inadequate scoring rules for assessing probabilistic football forecast models.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports81, \PrintBackRefs\CurrentBib Constantinou \BBA Fenton [\APACyear2013] \APACinsertmetastarconstantinou2013determining{APACrefauthors}Constantinou, A.C.\BCBT \BBA Fenton, N.E.  \APACrefYearMonthDay2013. \BBOQ\APACrefatitleDetermining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries Determining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports9137–50, \PrintBackRefs\CurrentBib Danisik \BOthers. [\APACyear2018] \APACinsertmetastardanisik2018football{APACrefauthors}Danisik, N., Lacko, P.\BCBL Farkas, M.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleFootball match prediction using players attributes Football match prediction using players attributes.\BBCQ \APACrefbtitle2018 World Symposium on Digital Intelligence for Systems and Machines (DISA) 2018 world symposium on digital intelligence for systems and machines (disa) (\BPGS 201–206). \PrintBackRefs\CurrentBib Decroos \BOthers. [\APACyear2019] \APACinsertmetastardecroos2019actions{APACrefauthors}Decroos, T., Bransen, L., Van Haaren, J.\BCBL Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleActions speak louder than goals: Valuing player actions in soccer Actions speak louder than goals: Valuing player actions in soccer.\BBCQ \APACrefbtitleProceedings of the 25th ACM SIGKDD international conference on knowledge discovery & data mining Proceedings of the 25th acm sigkdd international conference on knowledge discovery & data mining (\BPGS 1851–1861). \PrintBackRefs\CurrentBib Dixon \BBA Coles [\APACyear1997] \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarconstantinou2019dolores{APACrefauthors}Constantinou, A.C.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleDolores: a model that predicts football match outcomes from all over the world Dolores: a model that predicts football match outcomes from all over the world.\BBCQ \APACjournalVolNumPagesMachine learning108149–75, \PrintBackRefs\CurrentBib Constantinou \BBA Fenton [\APACyear2012] \APACinsertmetastarconstantinou2012solving{APACrefauthors}Constantinou, A.C.\BCBT \BBA Fenton, N.E.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleSolving the problem of inadequate scoring rules for assessing probabilistic football forecast models Solving the problem of inadequate scoring rules for assessing probabilistic football forecast models.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports81, \PrintBackRefs\CurrentBib Constantinou \BBA Fenton [\APACyear2013] \APACinsertmetastarconstantinou2013determining{APACrefauthors}Constantinou, A.C.\BCBT \BBA Fenton, N.E.  \APACrefYearMonthDay2013. \BBOQ\APACrefatitleDetermining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries Determining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports9137–50, \PrintBackRefs\CurrentBib Danisik \BOthers. [\APACyear2018] \APACinsertmetastardanisik2018football{APACrefauthors}Danisik, N., Lacko, P.\BCBL Farkas, M.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleFootball match prediction using players attributes Football match prediction using players attributes.\BBCQ \APACrefbtitle2018 World Symposium on Digital Intelligence for Systems and Machines (DISA) 2018 world symposium on digital intelligence for systems and machines (disa) (\BPGS 201–206). \PrintBackRefs\CurrentBib Decroos \BOthers. [\APACyear2019] \APACinsertmetastardecroos2019actions{APACrefauthors}Decroos, T., Bransen, L., Van Haaren, J.\BCBL Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleActions speak louder than goals: Valuing player actions in soccer Actions speak louder than goals: Valuing player actions in soccer.\BBCQ \APACrefbtitleProceedings of the 25th ACM SIGKDD international conference on knowledge discovery & data mining Proceedings of the 25th acm sigkdd international conference on knowledge discovery & data mining (\BPGS 1851–1861). \PrintBackRefs\CurrentBib Dixon \BBA Coles [\APACyear1997] \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. 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[\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarconstantinou2012solving{APACrefauthors}Constantinou, A.C.\BCBT \BBA Fenton, N.E.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleSolving the problem of inadequate scoring rules for assessing probabilistic football forecast models Solving the problem of inadequate scoring rules for assessing probabilistic football forecast models.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports81, \PrintBackRefs\CurrentBib Constantinou \BBA Fenton [\APACyear2013] \APACinsertmetastarconstantinou2013determining{APACrefauthors}Constantinou, A.C.\BCBT \BBA Fenton, N.E.  \APACrefYearMonthDay2013. \BBOQ\APACrefatitleDetermining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries Determining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports9137–50, \PrintBackRefs\CurrentBib Danisik \BOthers. [\APACyear2018] \APACinsertmetastardanisik2018football{APACrefauthors}Danisik, N., Lacko, P.\BCBL Farkas, M.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleFootball match prediction using players attributes Football match prediction using players attributes.\BBCQ \APACrefbtitle2018 World Symposium on Digital Intelligence for Systems and Machines (DISA) 2018 world symposium on digital intelligence for systems and machines (disa) (\BPGS 201–206). \PrintBackRefs\CurrentBib Decroos \BOthers. [\APACyear2019] \APACinsertmetastardecroos2019actions{APACrefauthors}Decroos, T., Bransen, L., Van Haaren, J.\BCBL Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleActions speak louder than goals: Valuing player actions in soccer Actions speak louder than goals: Valuing player actions in soccer.\BBCQ \APACrefbtitleProceedings of the 25th ACM SIGKDD international conference on knowledge discovery & data mining Proceedings of the 25th acm sigkdd international conference on knowledge discovery & data mining (\BPGS 1851–1861). \PrintBackRefs\CurrentBib Dixon \BBA Coles [\APACyear1997] \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarconstantinou2013determining{APACrefauthors}Constantinou, A.C.\BCBT \BBA Fenton, N.E.  \APACrefYearMonthDay2013. \BBOQ\APACrefatitleDetermining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries Determining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports9137–50, \PrintBackRefs\CurrentBib Danisik \BOthers. [\APACyear2018] \APACinsertmetastardanisik2018football{APACrefauthors}Danisik, N., Lacko, P.\BCBL Farkas, M.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleFootball match prediction using players attributes Football match prediction using players attributes.\BBCQ \APACrefbtitle2018 World Symposium on Digital Intelligence for Systems and Machines (DISA) 2018 world symposium on digital intelligence for systems and machines (disa) (\BPGS 201–206). \PrintBackRefs\CurrentBib Decroos \BOthers. [\APACyear2019] \APACinsertmetastardecroos2019actions{APACrefauthors}Decroos, T., Bransen, L., Van Haaren, J.\BCBL Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleActions speak louder than goals: Valuing player actions in soccer Actions speak louder than goals: Valuing player actions in soccer.\BBCQ \APACrefbtitleProceedings of the 25th ACM SIGKDD international conference on knowledge discovery & data mining Proceedings of the 25th acm sigkdd international conference on knowledge discovery & data mining (\BPGS 1851–1861). \PrintBackRefs\CurrentBib Dixon \BBA Coles [\APACyear1997] \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastardanisik2018football{APACrefauthors}Danisik, N., Lacko, P.\BCBL Farkas, M.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleFootball match prediction using players attributes Football match prediction using players attributes.\BBCQ \APACrefbtitle2018 World Symposium on Digital Intelligence for Systems and Machines (DISA) 2018 world symposium on digital intelligence for systems and machines (disa) (\BPGS 201–206). \PrintBackRefs\CurrentBib Decroos \BOthers. [\APACyear2019] \APACinsertmetastardecroos2019actions{APACrefauthors}Decroos, T., Bransen, L., Van Haaren, J.\BCBL Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleActions speak louder than goals: Valuing player actions in soccer Actions speak louder than goals: Valuing player actions in soccer.\BBCQ \APACrefbtitleProceedings of the 25th ACM SIGKDD international conference on knowledge discovery & data mining Proceedings of the 25th acm sigkdd international conference on knowledge discovery & data mining (\BPGS 1851–1861). \PrintBackRefs\CurrentBib Dixon \BBA Coles [\APACyear1997] \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastardecroos2019actions{APACrefauthors}Decroos, T., Bransen, L., Van Haaren, J.\BCBL Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleActions speak louder than goals: Valuing player actions in soccer Actions speak louder than goals: Valuing player actions in soccer.\BBCQ \APACrefbtitleProceedings of the 25th ACM SIGKDD international conference on knowledge discovery & data mining Proceedings of the 25th acm sigkdd international conference on knowledge discovery & data mining (\BPGS 1851–1861). \PrintBackRefs\CurrentBib Dixon \BBA Coles [\APACyear1997] \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. 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[\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarchen2016xgboost{APACrefauthors}Chen, T.\BCBT \BBA Guestrin, C.  \APACrefYearMonthDay2016. \BBOQ\APACrefatitleXgboost: A scalable tree boosting system Xgboost: A scalable tree boosting system.\BBCQ \APACrefbtitleProceedings of the 22nd acm sigkdd international conference on knowledge discovery and data mining Proceedings of the 22nd acm sigkdd international conference on knowledge discovery and data mining (\BPGS 785–794). \PrintBackRefs\CurrentBib Chung \BOthers. 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[\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarchung2014empirical{APACrefauthors}Chung, J., Gulcehre, C., Cho, K.\BCBL Bengio, Y.  \APACrefYearMonthDay2014. \BBOQ\APACrefatitleEmpirical evaluation of gated recurrent neural networks on sequence modeling Empirical evaluation of gated recurrent neural networks on sequence modeling.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:1412.3555, \PrintBackRefs\CurrentBib Constantinou [\APACyear2019] \APACinsertmetastarconstantinou2019dolores{APACrefauthors}Constantinou, A.C.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleDolores: a model that predicts football match outcomes from all over the world Dolores: a model that predicts football match outcomes from all over the world.\BBCQ \APACjournalVolNumPagesMachine learning108149–75, \PrintBackRefs\CurrentBib Constantinou \BBA Fenton [\APACyear2012] \APACinsertmetastarconstantinou2012solving{APACrefauthors}Constantinou, A.C.\BCBT \BBA Fenton, N.E.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleSolving the problem of inadequate scoring rules for assessing probabilistic football forecast models Solving the problem of inadequate scoring rules for assessing probabilistic football forecast models.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports81, \PrintBackRefs\CurrentBib Constantinou \BBA Fenton [\APACyear2013] \APACinsertmetastarconstantinou2013determining{APACrefauthors}Constantinou, A.C.\BCBT \BBA Fenton, N.E.  \APACrefYearMonthDay2013. \BBOQ\APACrefatitleDetermining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries Determining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports9137–50, \PrintBackRefs\CurrentBib Danisik \BOthers. [\APACyear2018] \APACinsertmetastardanisik2018football{APACrefauthors}Danisik, N., Lacko, P.\BCBL Farkas, M.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleFootball match prediction using players attributes Football match prediction using players attributes.\BBCQ \APACrefbtitle2018 World Symposium on Digital Intelligence for Systems and Machines (DISA) 2018 world symposium on digital intelligence for systems and machines (disa) (\BPGS 201–206). \PrintBackRefs\CurrentBib Decroos \BOthers. [\APACyear2019] \APACinsertmetastardecroos2019actions{APACrefauthors}Decroos, T., Bransen, L., Van Haaren, J.\BCBL Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleActions speak louder than goals: Valuing player actions in soccer Actions speak louder than goals: Valuing player actions in soccer.\BBCQ \APACrefbtitleProceedings of the 25th ACM SIGKDD international conference on knowledge discovery & data mining Proceedings of the 25th acm sigkdd international conference on knowledge discovery & data mining (\BPGS 1851–1861). \PrintBackRefs\CurrentBib Dixon \BBA Coles [\APACyear1997] \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarconstantinou2019dolores{APACrefauthors}Constantinou, A.C.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleDolores: a model that predicts football match outcomes from all over the world Dolores: a model that predicts football match outcomes from all over the world.\BBCQ \APACjournalVolNumPagesMachine learning108149–75, \PrintBackRefs\CurrentBib Constantinou \BBA Fenton [\APACyear2012] \APACinsertmetastarconstantinou2012solving{APACrefauthors}Constantinou, A.C.\BCBT \BBA Fenton, N.E.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleSolving the problem of inadequate scoring rules for assessing probabilistic football forecast models Solving the problem of inadequate scoring rules for assessing probabilistic football forecast models.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports81, \PrintBackRefs\CurrentBib Constantinou \BBA Fenton [\APACyear2013] \APACinsertmetastarconstantinou2013determining{APACrefauthors}Constantinou, A.C.\BCBT \BBA Fenton, N.E.  \APACrefYearMonthDay2013. \BBOQ\APACrefatitleDetermining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries Determining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports9137–50, \PrintBackRefs\CurrentBib Danisik \BOthers. [\APACyear2018] \APACinsertmetastardanisik2018football{APACrefauthors}Danisik, N., Lacko, P.\BCBL Farkas, M.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleFootball match prediction using players attributes Football match prediction using players attributes.\BBCQ \APACrefbtitle2018 World Symposium on Digital Intelligence for Systems and Machines (DISA) 2018 world symposium on digital intelligence for systems and machines (disa) (\BPGS 201–206). \PrintBackRefs\CurrentBib Decroos \BOthers. [\APACyear2019] \APACinsertmetastardecroos2019actions{APACrefauthors}Decroos, T., Bransen, L., Van Haaren, J.\BCBL Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleActions speak louder than goals: Valuing player actions in soccer Actions speak louder than goals: Valuing player actions in soccer.\BBCQ \APACrefbtitleProceedings of the 25th ACM SIGKDD international conference on knowledge discovery & data mining Proceedings of the 25th acm sigkdd international conference on knowledge discovery & data mining (\BPGS 1851–1861). \PrintBackRefs\CurrentBib Dixon \BBA Coles [\APACyear1997] \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarconstantinou2012solving{APACrefauthors}Constantinou, A.C.\BCBT \BBA Fenton, N.E.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleSolving the problem of inadequate scoring rules for assessing probabilistic football forecast models Solving the problem of inadequate scoring rules for assessing probabilistic football forecast models.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports81, \PrintBackRefs\CurrentBib Constantinou \BBA Fenton [\APACyear2013] \APACinsertmetastarconstantinou2013determining{APACrefauthors}Constantinou, A.C.\BCBT \BBA Fenton, N.E.  \APACrefYearMonthDay2013. \BBOQ\APACrefatitleDetermining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries Determining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports9137–50, \PrintBackRefs\CurrentBib Danisik \BOthers. [\APACyear2018] \APACinsertmetastardanisik2018football{APACrefauthors}Danisik, N., Lacko, P.\BCBL Farkas, M.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleFootball match prediction using players attributes Football match prediction using players attributes.\BBCQ \APACrefbtitle2018 World Symposium on Digital Intelligence for Systems and Machines (DISA) 2018 world symposium on digital intelligence for systems and machines (disa) (\BPGS 201–206). \PrintBackRefs\CurrentBib Decroos \BOthers. [\APACyear2019] \APACinsertmetastardecroos2019actions{APACrefauthors}Decroos, T., Bransen, L., Van Haaren, J.\BCBL Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleActions speak louder than goals: Valuing player actions in soccer Actions speak louder than goals: Valuing player actions in soccer.\BBCQ \APACrefbtitleProceedings of the 25th ACM SIGKDD international conference on knowledge discovery & data mining Proceedings of the 25th acm sigkdd international conference on knowledge discovery & data mining (\BPGS 1851–1861). \PrintBackRefs\CurrentBib Dixon \BBA Coles [\APACyear1997] \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarconstantinou2013determining{APACrefauthors}Constantinou, A.C.\BCBT \BBA Fenton, N.E.  \APACrefYearMonthDay2013. \BBOQ\APACrefatitleDetermining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries Determining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports9137–50, \PrintBackRefs\CurrentBib Danisik \BOthers. [\APACyear2018] \APACinsertmetastardanisik2018football{APACrefauthors}Danisik, N., Lacko, P.\BCBL Farkas, M.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleFootball match prediction using players attributes Football match prediction using players attributes.\BBCQ \APACrefbtitle2018 World Symposium on Digital Intelligence for Systems and Machines (DISA) 2018 world symposium on digital intelligence for systems and machines (disa) (\BPGS 201–206). \PrintBackRefs\CurrentBib Decroos \BOthers. [\APACyear2019] \APACinsertmetastardecroos2019actions{APACrefauthors}Decroos, T., Bransen, L., Van Haaren, J.\BCBL Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleActions speak louder than goals: Valuing player actions in soccer Actions speak louder than goals: Valuing player actions in soccer.\BBCQ \APACrefbtitleProceedings of the 25th ACM SIGKDD international conference on knowledge discovery & data mining Proceedings of the 25th acm sigkdd international conference on knowledge discovery & data mining (\BPGS 1851–1861). \PrintBackRefs\CurrentBib Dixon \BBA Coles [\APACyear1997] \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastardanisik2018football{APACrefauthors}Danisik, N., Lacko, P.\BCBL Farkas, M.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleFootball match prediction using players attributes Football match prediction using players attributes.\BBCQ \APACrefbtitle2018 World Symposium on Digital Intelligence for Systems and Machines (DISA) 2018 world symposium on digital intelligence for systems and machines (disa) (\BPGS 201–206). \PrintBackRefs\CurrentBib Decroos \BOthers. [\APACyear2019] \APACinsertmetastardecroos2019actions{APACrefauthors}Decroos, T., Bransen, L., Van Haaren, J.\BCBL Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleActions speak louder than goals: Valuing player actions in soccer Actions speak louder than goals: Valuing player actions in soccer.\BBCQ \APACrefbtitleProceedings of the 25th ACM SIGKDD international conference on knowledge discovery & data mining Proceedings of the 25th acm sigkdd international conference on knowledge discovery & data mining (\BPGS 1851–1861). \PrintBackRefs\CurrentBib Dixon \BBA Coles [\APACyear1997] \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastardecroos2019actions{APACrefauthors}Decroos, T., Bransen, L., Van Haaren, J.\BCBL Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleActions speak louder than goals: Valuing player actions in soccer Actions speak louder than goals: Valuing player actions in soccer.\BBCQ \APACrefbtitleProceedings of the 25th ACM SIGKDD international conference on knowledge discovery & data mining Proceedings of the 25th acm sigkdd international conference on knowledge discovery & data mining (\BPGS 1851–1861). \PrintBackRefs\CurrentBib Dixon \BBA Coles [\APACyear1997] \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. 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[\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarchung2014empirical{APACrefauthors}Chung, J., Gulcehre, C., Cho, K.\BCBL Bengio, Y.  \APACrefYearMonthDay2014. \BBOQ\APACrefatitleEmpirical evaluation of gated recurrent neural networks on sequence modeling Empirical evaluation of gated recurrent neural networks on sequence modeling.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:1412.3555, \PrintBackRefs\CurrentBib Constantinou [\APACyear2019] \APACinsertmetastarconstantinou2019dolores{APACrefauthors}Constantinou, A.C.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleDolores: a model that predicts football match outcomes from all over the world Dolores: a model that predicts football match outcomes from all over the world.\BBCQ \APACjournalVolNumPagesMachine learning108149–75, \PrintBackRefs\CurrentBib Constantinou \BBA Fenton [\APACyear2012] \APACinsertmetastarconstantinou2012solving{APACrefauthors}Constantinou, A.C.\BCBT \BBA Fenton, N.E.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleSolving the problem of inadequate scoring rules for assessing probabilistic football forecast models Solving the problem of inadequate scoring rules for assessing probabilistic football forecast models.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports81, \PrintBackRefs\CurrentBib Constantinou \BBA Fenton [\APACyear2013] \APACinsertmetastarconstantinou2013determining{APACrefauthors}Constantinou, A.C.\BCBT \BBA Fenton, N.E.  \APACrefYearMonthDay2013. \BBOQ\APACrefatitleDetermining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries Determining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports9137–50, \PrintBackRefs\CurrentBib Danisik \BOthers. [\APACyear2018] \APACinsertmetastardanisik2018football{APACrefauthors}Danisik, N., Lacko, P.\BCBL Farkas, M.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleFootball match prediction using players attributes Football match prediction using players attributes.\BBCQ \APACrefbtitle2018 World Symposium on Digital Intelligence for Systems and Machines (DISA) 2018 world symposium on digital intelligence for systems and machines (disa) (\BPGS 201–206). \PrintBackRefs\CurrentBib Decroos \BOthers. [\APACyear2019] \APACinsertmetastardecroos2019actions{APACrefauthors}Decroos, T., Bransen, L., Van Haaren, J.\BCBL Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleActions speak louder than goals: Valuing player actions in soccer Actions speak louder than goals: Valuing player actions in soccer.\BBCQ \APACrefbtitleProceedings of the 25th ACM SIGKDD international conference on knowledge discovery & data mining Proceedings of the 25th acm sigkdd international conference on knowledge discovery & data mining (\BPGS 1851–1861). \PrintBackRefs\CurrentBib Dixon \BBA Coles [\APACyear1997] \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarconstantinou2019dolores{APACrefauthors}Constantinou, A.C.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleDolores: a model that predicts football match outcomes from all over the world Dolores: a model that predicts football match outcomes from all over the world.\BBCQ \APACjournalVolNumPagesMachine learning108149–75, \PrintBackRefs\CurrentBib Constantinou \BBA Fenton [\APACyear2012] \APACinsertmetastarconstantinou2012solving{APACrefauthors}Constantinou, A.C.\BCBT \BBA Fenton, N.E.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleSolving the problem of inadequate scoring rules for assessing probabilistic football forecast models Solving the problem of inadequate scoring rules for assessing probabilistic football forecast models.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports81, \PrintBackRefs\CurrentBib Constantinou \BBA Fenton [\APACyear2013] \APACinsertmetastarconstantinou2013determining{APACrefauthors}Constantinou, A.C.\BCBT \BBA Fenton, N.E.  \APACrefYearMonthDay2013. \BBOQ\APACrefatitleDetermining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries Determining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports9137–50, \PrintBackRefs\CurrentBib Danisik \BOthers. [\APACyear2018] \APACinsertmetastardanisik2018football{APACrefauthors}Danisik, N., Lacko, P.\BCBL Farkas, M.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleFootball match prediction using players attributes Football match prediction using players attributes.\BBCQ \APACrefbtitle2018 World Symposium on Digital Intelligence for Systems and Machines (DISA) 2018 world symposium on digital intelligence for systems and machines (disa) (\BPGS 201–206). \PrintBackRefs\CurrentBib Decroos \BOthers. [\APACyear2019] \APACinsertmetastardecroos2019actions{APACrefauthors}Decroos, T., Bransen, L., Van Haaren, J.\BCBL Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleActions speak louder than goals: Valuing player actions in soccer Actions speak louder than goals: Valuing player actions in soccer.\BBCQ \APACrefbtitleProceedings of the 25th ACM SIGKDD international conference on knowledge discovery & data mining Proceedings of the 25th acm sigkdd international conference on knowledge discovery & data mining (\BPGS 1851–1861). \PrintBackRefs\CurrentBib Dixon \BBA Coles [\APACyear1997] \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. 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[\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarconstantinou2012solving{APACrefauthors}Constantinou, A.C.\BCBT \BBA Fenton, N.E.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleSolving the problem of inadequate scoring rules for assessing probabilistic football forecast models Solving the problem of inadequate scoring rules for assessing probabilistic football forecast models.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports81, \PrintBackRefs\CurrentBib Constantinou \BBA Fenton [\APACyear2013] \APACinsertmetastarconstantinou2013determining{APACrefauthors}Constantinou, A.C.\BCBT \BBA Fenton, N.E.  \APACrefYearMonthDay2013. \BBOQ\APACrefatitleDetermining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries Determining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports9137–50, \PrintBackRefs\CurrentBib Danisik \BOthers. [\APACyear2018] \APACinsertmetastardanisik2018football{APACrefauthors}Danisik, N., Lacko, P.\BCBL Farkas, M.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleFootball match prediction using players attributes Football match prediction using players attributes.\BBCQ \APACrefbtitle2018 World Symposium on Digital Intelligence for Systems and Machines (DISA) 2018 world symposium on digital intelligence for systems and machines (disa) (\BPGS 201–206). \PrintBackRefs\CurrentBib Decroos \BOthers. [\APACyear2019] \APACinsertmetastardecroos2019actions{APACrefauthors}Decroos, T., Bransen, L., Van Haaren, J.\BCBL Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleActions speak louder than goals: Valuing player actions in soccer Actions speak louder than goals: Valuing player actions in soccer.\BBCQ \APACrefbtitleProceedings of the 25th ACM SIGKDD international conference on knowledge discovery & data mining Proceedings of the 25th acm sigkdd international conference on knowledge discovery & data mining (\BPGS 1851–1861). \PrintBackRefs\CurrentBib Dixon \BBA Coles [\APACyear1997] \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarconstantinou2013determining{APACrefauthors}Constantinou, A.C.\BCBT \BBA Fenton, N.E.  \APACrefYearMonthDay2013. \BBOQ\APACrefatitleDetermining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries Determining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports9137–50, \PrintBackRefs\CurrentBib Danisik \BOthers. [\APACyear2018] \APACinsertmetastardanisik2018football{APACrefauthors}Danisik, N., Lacko, P.\BCBL Farkas, M.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleFootball match prediction using players attributes Football match prediction using players attributes.\BBCQ \APACrefbtitle2018 World Symposium on Digital Intelligence for Systems and Machines (DISA) 2018 world symposium on digital intelligence for systems and machines (disa) (\BPGS 201–206). \PrintBackRefs\CurrentBib Decroos \BOthers. [\APACyear2019] \APACinsertmetastardecroos2019actions{APACrefauthors}Decroos, T., Bransen, L., Van Haaren, J.\BCBL Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleActions speak louder than goals: Valuing player actions in soccer Actions speak louder than goals: Valuing player actions in soccer.\BBCQ \APACrefbtitleProceedings of the 25th ACM SIGKDD international conference on knowledge discovery & data mining Proceedings of the 25th acm sigkdd international conference on knowledge discovery & data mining (\BPGS 1851–1861). \PrintBackRefs\CurrentBib Dixon \BBA Coles [\APACyear1997] \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastardanisik2018football{APACrefauthors}Danisik, N., Lacko, P.\BCBL Farkas, M.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleFootball match prediction using players attributes Football match prediction using players attributes.\BBCQ \APACrefbtitle2018 World Symposium on Digital Intelligence for Systems and Machines (DISA) 2018 world symposium on digital intelligence for systems and machines (disa) (\BPGS 201–206). \PrintBackRefs\CurrentBib Decroos \BOthers. [\APACyear2019] \APACinsertmetastardecroos2019actions{APACrefauthors}Decroos, T., Bransen, L., Van Haaren, J.\BCBL Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleActions speak louder than goals: Valuing player actions in soccer Actions speak louder than goals: Valuing player actions in soccer.\BBCQ \APACrefbtitleProceedings of the 25th ACM SIGKDD international conference on knowledge discovery & data mining Proceedings of the 25th acm sigkdd international conference on knowledge discovery & data mining (\BPGS 1851–1861). \PrintBackRefs\CurrentBib Dixon \BBA Coles [\APACyear1997] \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastardecroos2019actions{APACrefauthors}Decroos, T., Bransen, L., Van Haaren, J.\BCBL Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleActions speak louder than goals: Valuing player actions in soccer Actions speak louder than goals: Valuing player actions in soccer.\BBCQ \APACrefbtitleProceedings of the 25th ACM SIGKDD international conference on knowledge discovery & data mining Proceedings of the 25th acm sigkdd international conference on knowledge discovery & data mining (\BPGS 1851–1861). \PrintBackRefs\CurrentBib Dixon \BBA Coles [\APACyear1997] \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. 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[\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarconstantinou2019dolores{APACrefauthors}Constantinou, A.C.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleDolores: a model that predicts football match outcomes from all over the world Dolores: a model that predicts football match outcomes from all over the world.\BBCQ \APACjournalVolNumPagesMachine learning108149–75, \PrintBackRefs\CurrentBib Constantinou \BBA Fenton [\APACyear2012] \APACinsertmetastarconstantinou2012solving{APACrefauthors}Constantinou, A.C.\BCBT \BBA Fenton, N.E.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleSolving the problem of inadequate scoring rules for assessing probabilistic football forecast models Solving the problem of inadequate scoring rules for assessing probabilistic football forecast models.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports81, \PrintBackRefs\CurrentBib Constantinou \BBA Fenton [\APACyear2013] \APACinsertmetastarconstantinou2013determining{APACrefauthors}Constantinou, A.C.\BCBT \BBA Fenton, N.E.  \APACrefYearMonthDay2013. \BBOQ\APACrefatitleDetermining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries Determining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports9137–50, \PrintBackRefs\CurrentBib Danisik \BOthers. [\APACyear2018] \APACinsertmetastardanisik2018football{APACrefauthors}Danisik, N., Lacko, P.\BCBL Farkas, M.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleFootball match prediction using players attributes Football match prediction using players attributes.\BBCQ \APACrefbtitle2018 World Symposium on Digital Intelligence for Systems and Machines (DISA) 2018 world symposium on digital intelligence for systems and machines (disa) (\BPGS 201–206). \PrintBackRefs\CurrentBib Decroos \BOthers. [\APACyear2019] \APACinsertmetastardecroos2019actions{APACrefauthors}Decroos, T., Bransen, L., Van Haaren, J.\BCBL Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleActions speak louder than goals: Valuing player actions in soccer Actions speak louder than goals: Valuing player actions in soccer.\BBCQ \APACrefbtitleProceedings of the 25th ACM SIGKDD international conference on knowledge discovery & data mining Proceedings of the 25th acm sigkdd international conference on knowledge discovery & data mining (\BPGS 1851–1861). \PrintBackRefs\CurrentBib Dixon \BBA Coles [\APACyear1997] \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarconstantinou2012solving{APACrefauthors}Constantinou, A.C.\BCBT \BBA Fenton, N.E.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleSolving the problem of inadequate scoring rules for assessing probabilistic football forecast models Solving the problem of inadequate scoring rules for assessing probabilistic football forecast models.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports81, \PrintBackRefs\CurrentBib Constantinou \BBA Fenton [\APACyear2013] \APACinsertmetastarconstantinou2013determining{APACrefauthors}Constantinou, A.C.\BCBT \BBA Fenton, N.E.  \APACrefYearMonthDay2013. \BBOQ\APACrefatitleDetermining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries Determining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports9137–50, \PrintBackRefs\CurrentBib Danisik \BOthers. [\APACyear2018] \APACinsertmetastardanisik2018football{APACrefauthors}Danisik, N., Lacko, P.\BCBL Farkas, M.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleFootball match prediction using players attributes Football match prediction using players attributes.\BBCQ \APACrefbtitle2018 World Symposium on Digital Intelligence for Systems and Machines (DISA) 2018 world symposium on digital intelligence for systems and machines (disa) (\BPGS 201–206). \PrintBackRefs\CurrentBib Decroos \BOthers. [\APACyear2019] \APACinsertmetastardecroos2019actions{APACrefauthors}Decroos, T., Bransen, L., Van Haaren, J.\BCBL Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleActions speak louder than goals: Valuing player actions in soccer Actions speak louder than goals: Valuing player actions in soccer.\BBCQ \APACrefbtitleProceedings of the 25th ACM SIGKDD international conference on knowledge discovery & data mining Proceedings of the 25th acm sigkdd international conference on knowledge discovery & data mining (\BPGS 1851–1861). \PrintBackRefs\CurrentBib Dixon \BBA Coles [\APACyear1997] \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarconstantinou2013determining{APACrefauthors}Constantinou, A.C.\BCBT \BBA Fenton, N.E.  \APACrefYearMonthDay2013. \BBOQ\APACrefatitleDetermining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries Determining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports9137–50, \PrintBackRefs\CurrentBib Danisik \BOthers. [\APACyear2018] \APACinsertmetastardanisik2018football{APACrefauthors}Danisik, N., Lacko, P.\BCBL Farkas, M.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleFootball match prediction using players attributes Football match prediction using players attributes.\BBCQ \APACrefbtitle2018 World Symposium on Digital Intelligence for Systems and Machines (DISA) 2018 world symposium on digital intelligence for systems and machines (disa) (\BPGS 201–206). \PrintBackRefs\CurrentBib Decroos \BOthers. [\APACyear2019] \APACinsertmetastardecroos2019actions{APACrefauthors}Decroos, T., Bransen, L., Van Haaren, J.\BCBL Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleActions speak louder than goals: Valuing player actions in soccer Actions speak louder than goals: Valuing player actions in soccer.\BBCQ \APACrefbtitleProceedings of the 25th ACM SIGKDD international conference on knowledge discovery & data mining Proceedings of the 25th acm sigkdd international conference on knowledge discovery & data mining (\BPGS 1851–1861). \PrintBackRefs\CurrentBib Dixon \BBA Coles [\APACyear1997] \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastardanisik2018football{APACrefauthors}Danisik, N., Lacko, P.\BCBL Farkas, M.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleFootball match prediction using players attributes Football match prediction using players attributes.\BBCQ \APACrefbtitle2018 World Symposium on Digital Intelligence for Systems and Machines (DISA) 2018 world symposium on digital intelligence for systems and machines (disa) (\BPGS 201–206). \PrintBackRefs\CurrentBib Decroos \BOthers. [\APACyear2019] \APACinsertmetastardecroos2019actions{APACrefauthors}Decroos, T., Bransen, L., Van Haaren, J.\BCBL Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleActions speak louder than goals: Valuing player actions in soccer Actions speak louder than goals: Valuing player actions in soccer.\BBCQ \APACrefbtitleProceedings of the 25th ACM SIGKDD international conference on knowledge discovery & data mining Proceedings of the 25th acm sigkdd international conference on knowledge discovery & data mining (\BPGS 1851–1861). \PrintBackRefs\CurrentBib Dixon \BBA Coles [\APACyear1997] \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastardecroos2019actions{APACrefauthors}Decroos, T., Bransen, L., Van Haaren, J.\BCBL Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleActions speak louder than goals: Valuing player actions in soccer Actions speak louder than goals: Valuing player actions in soccer.\BBCQ \APACrefbtitleProceedings of the 25th ACM SIGKDD international conference on knowledge discovery & data mining Proceedings of the 25th acm sigkdd international conference on knowledge discovery & data mining (\BPGS 1851–1861). \PrintBackRefs\CurrentBib Dixon \BBA Coles [\APACyear1997] \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. 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[\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarconstantinou2012solving{APACrefauthors}Constantinou, A.C.\BCBT \BBA Fenton, N.E.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleSolving the problem of inadequate scoring rules for assessing probabilistic football forecast models Solving the problem of inadequate scoring rules for assessing probabilistic football forecast models.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports81, \PrintBackRefs\CurrentBib Constantinou \BBA Fenton [\APACyear2013] \APACinsertmetastarconstantinou2013determining{APACrefauthors}Constantinou, A.C.\BCBT \BBA Fenton, N.E.  \APACrefYearMonthDay2013. \BBOQ\APACrefatitleDetermining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries Determining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports9137–50, \PrintBackRefs\CurrentBib Danisik \BOthers. [\APACyear2018] \APACinsertmetastardanisik2018football{APACrefauthors}Danisik, N., Lacko, P.\BCBL Farkas, M.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleFootball match prediction using players attributes Football match prediction using players attributes.\BBCQ \APACrefbtitle2018 World Symposium on Digital Intelligence for Systems and Machines (DISA) 2018 world symposium on digital intelligence for systems and machines (disa) (\BPGS 201–206). \PrintBackRefs\CurrentBib Decroos \BOthers. [\APACyear2019] \APACinsertmetastardecroos2019actions{APACrefauthors}Decroos, T., Bransen, L., Van Haaren, J.\BCBL Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleActions speak louder than goals: Valuing player actions in soccer Actions speak louder than goals: Valuing player actions in soccer.\BBCQ \APACrefbtitleProceedings of the 25th ACM SIGKDD international conference on knowledge discovery & data mining Proceedings of the 25th acm sigkdd international conference on knowledge discovery & data mining (\BPGS 1851–1861). \PrintBackRefs\CurrentBib Dixon \BBA Coles [\APACyear1997] \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarconstantinou2013determining{APACrefauthors}Constantinou, A.C.\BCBT \BBA Fenton, N.E.  \APACrefYearMonthDay2013. \BBOQ\APACrefatitleDetermining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries Determining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports9137–50, \PrintBackRefs\CurrentBib Danisik \BOthers. [\APACyear2018] \APACinsertmetastardanisik2018football{APACrefauthors}Danisik, N., Lacko, P.\BCBL Farkas, M.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleFootball match prediction using players attributes Football match prediction using players attributes.\BBCQ \APACrefbtitle2018 World Symposium on Digital Intelligence for Systems and Machines (DISA) 2018 world symposium on digital intelligence for systems and machines (disa) (\BPGS 201–206). \PrintBackRefs\CurrentBib Decroos \BOthers. [\APACyear2019] \APACinsertmetastardecroos2019actions{APACrefauthors}Decroos, T., Bransen, L., Van Haaren, J.\BCBL Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleActions speak louder than goals: Valuing player actions in soccer Actions speak louder than goals: Valuing player actions in soccer.\BBCQ \APACrefbtitleProceedings of the 25th ACM SIGKDD international conference on knowledge discovery & data mining Proceedings of the 25th acm sigkdd international conference on knowledge discovery & data mining (\BPGS 1851–1861). \PrintBackRefs\CurrentBib Dixon \BBA Coles [\APACyear1997] \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastardanisik2018football{APACrefauthors}Danisik, N., Lacko, P.\BCBL Farkas, M.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleFootball match prediction using players attributes Football match prediction using players attributes.\BBCQ \APACrefbtitle2018 World Symposium on Digital Intelligence for Systems and Machines (DISA) 2018 world symposium on digital intelligence for systems and machines (disa) (\BPGS 201–206). \PrintBackRefs\CurrentBib Decroos \BOthers. [\APACyear2019] \APACinsertmetastardecroos2019actions{APACrefauthors}Decroos, T., Bransen, L., Van Haaren, J.\BCBL Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleActions speak louder than goals: Valuing player actions in soccer Actions speak louder than goals: Valuing player actions in soccer.\BBCQ \APACrefbtitleProceedings of the 25th ACM SIGKDD international conference on knowledge discovery & data mining Proceedings of the 25th acm sigkdd international conference on knowledge discovery & data mining (\BPGS 1851–1861). \PrintBackRefs\CurrentBib Dixon \BBA Coles [\APACyear1997] \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastardecroos2019actions{APACrefauthors}Decroos, T., Bransen, L., Van Haaren, J.\BCBL Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleActions speak louder than goals: Valuing player actions in soccer Actions speak louder than goals: Valuing player actions in soccer.\BBCQ \APACrefbtitleProceedings of the 25th ACM SIGKDD international conference on knowledge discovery & data mining Proceedings of the 25th acm sigkdd international conference on knowledge discovery & data mining (\BPGS 1851–1861). \PrintBackRefs\CurrentBib Dixon \BBA Coles [\APACyear1997] \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. 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[\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. 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[\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarconstantinou2013determining{APACrefauthors}Constantinou, A.C.\BCBT \BBA Fenton, N.E.  \APACrefYearMonthDay2013. \BBOQ\APACrefatitleDetermining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries Determining the level of ability of football teams by dynamic ratings based on the relative discrepancies in scores between adversaries.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports9137–50, \PrintBackRefs\CurrentBib Danisik \BOthers. [\APACyear2018] \APACinsertmetastardanisik2018football{APACrefauthors}Danisik, N., Lacko, P.\BCBL Farkas, M.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleFootball match prediction using players attributes Football match prediction using players attributes.\BBCQ \APACrefbtitle2018 World Symposium on Digital Intelligence for Systems and Machines (DISA) 2018 world symposium on digital intelligence for systems and machines (disa) (\BPGS 201–206). \PrintBackRefs\CurrentBib Decroos \BOthers. [\APACyear2019] \APACinsertmetastardecroos2019actions{APACrefauthors}Decroos, T., Bransen, L., Van Haaren, J.\BCBL Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleActions speak louder than goals: Valuing player actions in soccer Actions speak louder than goals: Valuing player actions in soccer.\BBCQ \APACrefbtitleProceedings of the 25th ACM SIGKDD international conference on knowledge discovery & data mining Proceedings of the 25th acm sigkdd international conference on knowledge discovery & data mining (\BPGS 1851–1861). \PrintBackRefs\CurrentBib Dixon \BBA Coles [\APACyear1997] \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastardanisik2018football{APACrefauthors}Danisik, N., Lacko, P.\BCBL Farkas, M.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleFootball match prediction using players attributes Football match prediction using players attributes.\BBCQ \APACrefbtitle2018 World Symposium on Digital Intelligence for Systems and Machines (DISA) 2018 world symposium on digital intelligence for systems and machines (disa) (\BPGS 201–206). \PrintBackRefs\CurrentBib Decroos \BOthers. [\APACyear2019] \APACinsertmetastardecroos2019actions{APACrefauthors}Decroos, T., Bransen, L., Van Haaren, J.\BCBL Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleActions speak louder than goals: Valuing player actions in soccer Actions speak louder than goals: Valuing player actions in soccer.\BBCQ \APACrefbtitleProceedings of the 25th ACM SIGKDD international conference on knowledge discovery & data mining Proceedings of the 25th acm sigkdd international conference on knowledge discovery & data mining (\BPGS 1851–1861). \PrintBackRefs\CurrentBib Dixon \BBA Coles [\APACyear1997] \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastardecroos2019actions{APACrefauthors}Decroos, T., Bransen, L., Van Haaren, J.\BCBL Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleActions speak louder than goals: Valuing player actions in soccer Actions speak louder than goals: Valuing player actions in soccer.\BBCQ \APACrefbtitleProceedings of the 25th ACM SIGKDD international conference on knowledge discovery & data mining Proceedings of the 25th acm sigkdd international conference on knowledge discovery & data mining (\BPGS 1851–1861). \PrintBackRefs\CurrentBib Dixon \BBA Coles [\APACyear1997] \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. 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[\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastardanisik2018football{APACrefauthors}Danisik, N., Lacko, P.\BCBL Farkas, M.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleFootball match prediction using players attributes Football match prediction using players attributes.\BBCQ \APACrefbtitle2018 World Symposium on Digital Intelligence for Systems and Machines (DISA) 2018 world symposium on digital intelligence for systems and machines (disa) (\BPGS 201–206). \PrintBackRefs\CurrentBib Decroos \BOthers. [\APACyear2019] \APACinsertmetastardecroos2019actions{APACrefauthors}Decroos, T., Bransen, L., Van Haaren, J.\BCBL Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleActions speak louder than goals: Valuing player actions in soccer Actions speak louder than goals: Valuing player actions in soccer.\BBCQ \APACrefbtitleProceedings of the 25th ACM SIGKDD international conference on knowledge discovery & data mining Proceedings of the 25th acm sigkdd international conference on knowledge discovery & data mining (\BPGS 1851–1861). \PrintBackRefs\CurrentBib Dixon \BBA Coles [\APACyear1997] \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastardecroos2019actions{APACrefauthors}Decroos, T., Bransen, L., Van Haaren, J.\BCBL Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleActions speak louder than goals: Valuing player actions in soccer Actions speak louder than goals: Valuing player actions in soccer.\BBCQ \APACrefbtitleProceedings of the 25th ACM SIGKDD international conference on knowledge discovery & data mining Proceedings of the 25th acm sigkdd international conference on knowledge discovery & data mining (\BPGS 1851–1861). \PrintBackRefs\CurrentBib Dixon \BBA Coles [\APACyear1997] \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. 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[\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastardecroos2019actions{APACrefauthors}Decroos, T., Bransen, L., Van Haaren, J.\BCBL Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleActions speak louder than goals: Valuing player actions in soccer Actions speak louder than goals: Valuing player actions in soccer.\BBCQ \APACrefbtitleProceedings of the 25th ACM SIGKDD international conference on knowledge discovery & data mining Proceedings of the 25th acm sigkdd international conference on knowledge discovery & data mining (\BPGS 1851–1861). \PrintBackRefs\CurrentBib Dixon \BBA Coles [\APACyear1997] \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. 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[\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastardixon1997modelling{APACrefauthors}Dixon, M.J.\BCBT \BBA Coles, S.G.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleModelling association football scores and inefficiencies in the football betting market Modelling association football scores and inefficiencies in the football betting market.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series C (Applied Statistics)462265–280, \PrintBackRefs\CurrentBib Dubitzky \BOthers. [\APACyear2019] \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. 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[\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. 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[\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastardubitzky2019open{APACrefauthors}Dubitzky, W., Lopes, P., Davis, J.\BCBL Berrar, D.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleThe open international soccer database for machine learning The open international soccer database for machine learning.\BBCQ \APACjournalVolNumPagesMachine learning1089–28, \PrintBackRefs\CurrentBib Epstein [\APACyear1969] \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. 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[\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. 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[\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarepstein1969scoring{APACrefauthors}Epstein, E.S.  \APACrefYearMonthDay1969. \BBOQ\APACrefatitleA scoring system for probability forecasts of ranked categories A scoring system for probability forecasts of ranked categories.\BBCQ \APACjournalVolNumPagesJournal of Applied Meteorology (1962-1982)86985–987, \PrintBackRefs\CurrentBib Hall [\APACyear1999] \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. 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[\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarhall1988correlation{APACrefauthors}Hall, M.A.  \APACrefYearMonthDay1999. \BBOQ\APACrefatitleCorrelation-based feature subset selection for machine learning Correlation-based feature subset selection for machine learning.\BBCQ \APACjournalVolNumPagesThesis submitted in partial fulfilment of the requirements of the degree of Doctor of Philosophy at the University of Waikato, \PrintBackRefs\CurrentBib Hochreiter \BBA Schmidhuber [\APACyear1997] \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. 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[\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarhochreiter1997long{APACrefauthors}Hochreiter, S.\BCBT \BBA Schmidhuber, J.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleLong short-term memory Long short-term memory.\BBCQ \APACjournalVolNumPagesNeural computation981735–1780, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2019] \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib
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[\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarhubavcek2019learning{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleLearning to predict soccer results from relational data with gradient boosted trees Learning to predict soccer results from relational data with gradient boosted trees.\BBCQ \APACjournalVolNumPagesMachine Learning10829–47, \PrintBackRefs\CurrentBib Hubáček \BOthers. [\APACyear2022] \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. 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[\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarhubavcek2022forty{APACrefauthors}Hubáček, O., Šourek, G.\BCBL Železnỳ, F.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib
  19. \APACrefYearMonthDay2022. \BBOQ\APACrefatitleForty years of score-based soccer match outcome prediction: an experimental review Forty years of score-based soccer match outcome prediction: an experimental review.\BBCQ \APACjournalVolNumPagesIMA Journal of Management Mathematics3311–18, \PrintBackRefs\CurrentBib Jain \BOthers. [\APACyear2021] \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarjain2021soccer{APACrefauthors}Jain, S., Tiwari, E.\BCBL Sardar, P.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleSoccer Result prediction using deep learning and neural networks Soccer result prediction using deep learning and neural networks.\BBCQ \APACrefbtitleIntelligent Data Communication Technologies and Internet of Things: Proceedings of ICICI 2020 Intelligent data communication technologies and internet of things: Proceedings of icici 2020 (\BPGS 697–707). \PrintBackRefs\CurrentBib Joseph [\APACyear2022] \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib
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[\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. 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[\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib
  21. \APACinsertmetastarjoseph2022time{APACrefauthors}Joseph, L.D.  \APACrefYear2022.  \APACrefbtitleTime Series Approaches to Predict Soccer Match Outcome Time series approaches to predict soccer match outcome \APACtypeAddressSchool\BUPhD.  \APACaddressSchoolDublin, National College of Ireland. \PrintBackRefs\CurrentBib Kira \BBA Rendell [\APACyear1992] \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarkira1992practical{APACrefauthors}Kira, K.\BCBT \BBA Rendell, L.A.  \APACrefYearMonthDay1992. \BBOQ\APACrefatitleA practical approach to feature selection A practical approach to feature selection.\BBCQ \APACrefbtitleMachine learning proceedings 1992 Machine learning proceedings 1992 (\BPGS 249–256). \APACaddressPublisherElsevier. \PrintBackRefs\CurrentBib Kononenko [\APACyear1994] \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib
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[\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib
  23. \APACinsertmetastarkononenko1994estimating{APACrefauthors}Kononenko, I.  \APACrefYearMonthDay1994. \BBOQ\APACrefatitleEstimating attributes: Analysis and extensions of RELIEF Estimating attributes: Analysis and extensions of relief.\BBCQ \APACrefbtitleEuropean conference on machine learning European conference on machine learning (\BPGS 171–182). \PrintBackRefs\CurrentBib Maher [\APACyear1982] \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarmaher1982modelling{APACrefauthors}Maher, M.J.  \APACrefYearMonthDay1982. \BBOQ\APACrefatitleModelling association football scores Modelling association football scores.\BBCQ \APACjournalVolNumPagesStatistica Neerlandica363109–118, \PrintBackRefs\CurrentBib Malamatinos \BOthers. [\APACyear2022] \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. 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[\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarmalamatinos2022predicting{APACrefauthors}Malamatinos, M\BHBIC., Vrochidou, E.\BCBL Papakostas, G.A.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleOn Predicting Soccer Outcomes in the Greek League Using Machine Learning On predicting soccer outcomes in the greek league using machine learning.\BBCQ \APACjournalVolNumPagesComputers119133, \PrintBackRefs\CurrentBib Natarajan \BOthers. [\APACyear2012] \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. 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[\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarnatarajan2012gradient{APACrefauthors}Natarajan, S., Khot, T., Kersting, K., Gutmann, B.\BCBL Shavlik, J.  \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib
  26. \APACrefYearMonthDay2012. \BBOQ\APACrefatitleGradient-based boosting for statistical relational learning: The relational dependency network case Gradient-based boosting for statistical relational learning: The relational dependency network case.\BBCQ \APACjournalVolNumPagesMachine Learning8625–56, \PrintBackRefs\CurrentBib Page \BOthers. [\APACyear1998] \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarpage1998pagerank{APACrefauthors}Page, L., Brin, S., Motwani, R.\BCBL Winograd, T.  \APACrefYearMonthDay1998. \APACrefbtitleThe pagerank citation ranking: Bring order to the web The pagerank citation ranking: Bring order to the web \APACbVolEdTR\BTR. \APACaddressInstitutionTechnical report, stanford University. \PrintBackRefs\CurrentBib Prokhorenkova \BOthers. [\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib
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[\APACyear2018] \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. 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[\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarprokhorenkova2018catboost{APACrefauthors}Prokhorenkova, L., Gusev, G., Vorobev, A., Dorogush, A.V.\BCBL Gulin, A.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib
  28. \APACrefYearMonthDay2018. \BBOQ\APACrefatitleCatBoost: unbiased boosting with categorical features Catboost: unbiased boosting with categorical features.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems31, \PrintBackRefs\CurrentBib Rahman [\APACyear2020] \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib
  29. \APACinsertmetastarrahman2020deep{APACrefauthors}Rahman, M.A.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleA deep learning framework for football match prediction A deep learning framework for football match prediction.\BBCQ \APACjournalVolNumPagesSN Applied Sciences22165, \PrintBackRefs\CurrentBib M.N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrazali2022football{APACrefauthors}Razali, M.N., Mustapha, A., Mostafa, S.A.\BCBL Gunasekaran, S.S.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib
  30. \APACrefYearMonthDay2022. \BBOQ\APACrefatitleFootball Matches Outcomes Prediction Based on Gradient Boosting Algorithms and Football Rating System Football matches outcomes prediction based on gradient boosting algorithms and football rating system.\BBCQ \APACjournalVolNumPagesHuman Factors in Software and Systems Engineering6157, \PrintBackRefs\CurrentBib N. Razali \BOthers. [\APACyear2022] \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrazali2022deep{APACrefauthors}Razali, N., Mustapha, A., Arbaiy, N.\BCBL Lin, P\BHBIC.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib
  31. \APACrefYearMonthDay2022. \BBOQ\APACrefatitleDeep learning for football outcomes prediction based on football rating system Deep learning for football outcomes prediction based on football rating system.\BBCQ \APACrefbtitleAIP Conference Proceedings Aip conference proceedings (\BVOL 2644). \PrintBackRefs\CurrentBib Robberechts \BBA Davis [\APACyear2019] \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarrobberechts2019forecasting{APACrefauthors}Robberechts, P.\BCBT \BBA Davis, J.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib
  32. \APACrefYearMonthDay2019. \BBOQ\APACrefatitleForecasting the FIFA World Cup–Combining result-and goal-based team ability parameters Forecasting the fifa world cup–combining result-and goal-based team ability parameters.\BBCQ \APACrefbtitleMachine Learning and Data Mining for Sports Analytics: 5th International Workshop, MLSA 2018, Co-located with ECML/PKDD 2018, Dublin, Ireland, September 10, 2018, Proceedings 5 Machine learning and data mining for sports analytics: 5th international workshop, mlsa 2018, co-located with ecml/pkdd 2018, dublin, ireland, september 10, 2018, proceedings 5 (\BPGS 16–30). \PrintBackRefs\CurrentBib Simpson \BOthers. [\APACyear2022] \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarsimpson2022seq2event{APACrefauthors}Simpson, I., Beal, R.J., Locke, D.\BCBL Norman, T.J.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib
  33. \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSeq2Event: Learning the Language of Soccer using Transformer-based Match Event Prediction Seq2event: Learning the language of soccer using transformer-based match event prediction.\BBCQ \APACrefbtitleProceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining Proceedings of the 28th acm sigkdd conference on knowledge discovery and data mining (\BPGS 3898–3908). \PrintBackRefs\CurrentBib Szegedy \BOthers. [\APACyear2015] \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarszegedy2015going{APACrefauthors}Szegedy, C., Liu, W., Jia, Y., Sermanet, P., Reed, S., Anguelov, D.\BDBLRabinovich, A.  \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib
  34. \APACrefYearMonthDay2015. \BBOQ\APACrefatitleGoing deeper with convolutions Going deeper with convolutions.\BBCQ \APACrefbtitleProceedings of the IEEE conference on computer vision and pattern recognition Proceedings of the ieee conference on computer vision and pattern recognition (\BPGS 1–9). \PrintBackRefs\CurrentBib Tsokos \BOthers. [\APACyear2019] \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastartsokos2019modeling{APACrefauthors}Tsokos, A., Narayanan, S., Kosmidis, I., Baio, G., Cucuringu, M., Whitaker, G.\BCBL Király, F.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib
  35. \APACrefYearMonthDay2019. \BBOQ\APACrefatitleModeling outcomes of soccer matches Modeling outcomes of soccer matches.\BBCQ \APACjournalVolNumPagesMachine Learning10877–95, \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2017] \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarUrbanowicz2017Benchmarking{APACrefauthors}Urbanowicz, R.J., Olson, R.S., Schmitt, P., Meeker, M.\BCBL Moore, J.H.  \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib
  36. \APACrefYearMonthDay2017. \APACrefbtitleBenchmarking Relief-Based Feature Selection Methods. Benchmarking relief-based feature selection methods. \APAChowpublishedarXiv e-print. https://arxiv.org/abs/1711.08477. \PrintBackRefs\CurrentBib Vaswani \BOthers. [\APACyear2017] \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarvaswani2017attention{APACrefauthors}Vaswani, A., Shazeer, N., Parmar, N., Uszkoreit, J., Jones, L., Gomez, A.N.\BDBLPolosukhin, I.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib
  37. \APACrefYearMonthDay2017. \BBOQ\APACrefatitleAttention is all you need Attention is all you need.\BBCQ \APACjournalVolNumPagesAdvances in neural information processing systems30, \PrintBackRefs\CurrentBib Wheatcroft [\APACyear2021] \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib
  38. \APACinsertmetastarwheatcroft2021evaluating{APACrefauthors}Wheatcroft, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleEvaluating probabilistic forecasts of football matches: the case against the ranked probability score Evaluating probabilistic forecasts of football matches: the case against the ranked probability score.\BBCQ \APACjournalVolNumPagesJournal of Quantitative Analysis in Sports174273–287, \PrintBackRefs\CurrentBib Wu \BOthers. [\APACyear2022] \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarwu2022timesnet{APACrefauthors}Wu, H., Hu, T., Liu, Y., Zhou, H., Wang, J.\BCBL Long, M.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib
  39. \APACrefYearMonthDay2022. \BBOQ\APACrefatitleTimesnet: Temporal 2d-variation modeling for general time series analysis Timesnet: Temporal 2d-variation modeling for general time series analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2210.02186, \PrintBackRefs\CurrentBib Yeung, Bunker\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023framework{APACrefauthors}Yeung, C., Bunker, R.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib
  40. \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA framework of interpretable match results prediction in football with FIFA ratings and team formation A framework of interpretable match results prediction in football with fifa ratings and team formation.\BBCQ \APACjournalVolNumPagesPlos one184e0284318, \PrintBackRefs\CurrentBib Yeung \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023strategic{APACrefauthors}Yeung, C.\BCBT \BBA Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib
  41. \APACrefYearMonthDay2023. \BBOQ\APACrefatitleA Strategic Framework for Optimal Decisions in Football 1-vs-1 Shot-Taking Situations: An Integrated Approach of Machine Learning, Theory-Based Modeling, and Game Theory A strategic framework for optimal decisions in football 1-vs-1 shot-taking situations: An integrated approach of machine learning, theory-based modeling, and game theory.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2307.14732, \PrintBackRefs\CurrentBib Yeung, Sit\BCBL \BBA Fujii [\APACyear2023] \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastaryeung2023transformer{APACrefauthors}Yeung, C., Sit, T.\BCBL Fujii, K.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib
  42. \APACrefYearMonthDay2023. \BBOQ\APACrefatitleTransformer-Based Neural Marked Spatio Temporal Point Process Model for Football Match Events Analysis Transformer-based neural marked spatio temporal point process model for football match events analysis.\BBCQ \APACjournalVolNumPagesarXiv preprint arXiv:2302.09276, \PrintBackRefs\CurrentBib Zhang \BOthers. [\APACyear2022] \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib \APACinsertmetastarzhang2022sports{APACrefauthors}Zhang, Q., Zhang, X., Hu, H., Li, C., Lin, Y.\BCBL Ma, R.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib
  43. \APACrefYearMonthDay2022. \BBOQ\APACrefatitleSports match prediction model for training and exercise using attention-based LSTM network Sports match prediction model for training and exercise using attention-based lstm network.\BBCQ \APACjournalVolNumPagesDigital Communications and Networks84508–515, \PrintBackRefs\CurrentBib
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